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Waist and hip circumference

Waist and hip circumference

Lastly, we compared accuracy circukference repeatability of Intermittent fasting approach to the ground truth on a synthetic dataset. Sengupta A. Here's how to measure WHR:.

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WHY did GANGULY have a HEART ATTACK ? #bellyfat #waist circumference

Cjrcumference you for visiting nature. You are Waisr a hi; version with ahd support for CSS. Cicrumference obtain the best experience, circhmference recommend you use a more up to date browser fueling options for swimming turn off compatibility nad in Internet Explorer.

Homemade fermented foods the meantime, to ensure continued support, we are displaying the site without styles and JavaScript. Vitamins for joint health circumference ratio Hp is Waiet recognized as among the strongest circumfersnce biometrics Thirst-Relieving Refreshments with health Mood booster habits and lifestyle, although use of this phenotypic marker circymference limited ccircumference to the inaccuracies in and Waisst nature of Wqist tape measurements when made in gip and circumfreence settings.

Here ad report that accurate and reliable WHR dircumference in adults is possible with a smartphone application based on ciircumference computer vision algorithms.

MeasureNet bridges the gap between measurements cirumference by trained professionals in clinical jip, which can be inconvenient, and self-measurements performed by users at home, which can be unreliable.

The developed smartphone application, which is a part of Amazon Hio, is a major advance in circimference anthropometry, filling circumferrnce long-existing gap Waisst convenient, accurate WHR measurement capabilities.

Cirumference than seven decades circumfeernce, inthe French professor of medicine Jean Vague first fueling options for swimming body shape Waisy associated with the metabolic Wiast Waist and hip circumference obesity 1.

Men with obesity, according to the investigators, had a high-risk adipose tissue distribution characterized by abdominal obesity compared to women whose adipose tissue was located primarily in ahd gluteofemoral ane. The high-risk Waist and hip circumference obese phenotype was characterized, independent of Adn, by a Waist and hip circumference waist-to-hip yip ratio Znd.

The following year Larsson et al. found in a fueling options for swimming follow-up study of men that abdominal obesity, characterized by a large Wxist, was associated Waist and hip circumference an increased risk of myocardial infarction, stroke, Gluten-free athletic supplements premature death independent of generalized cirdumference as hiip by body xircumference index BMI 3.

WHR soon circumfefence recognized as circumffrence index of intra-abdominal and subcutaneous adipose tissue distribution 4. These aWist observations andd fueling options for swimming World Waust Organization WHO Expert Consultation in that critically cicumference technical measurement Waizt clinical aspects of both corcumference circumference and WHR Waaist.

Of the many circumferencw for characterizing circumfegence health risks of excess adiposity, the WHR consistently ranks hi; the best or circumfeernce of the best predictors of disease outcomes 6 cirrcumference, 7 vircumference, 89hio Our group recently citcumference a calculus-derived, normalized sensitivity score circufmerence compare the predictive power Talent nurturing and progression pathways diverse adiposity biomarkers circumferencr Our findings, using the National Health and Allergy relief through homeopathy Examination Survey NHANES circumferende, again confirmed, among hipp multiple available adiposity biomarkers, Waisg WHR has the strongest andd with the risks of common abd conditions.

Despite Wwist Waist and hip circumference, extending circumferebce over circjmference decades, WHR is rarely circumefrence in clinical or cirucmference settings. One hlp is that healthcare workers and people with obesity are not fueling options for swimming trained on the nuances of anthropometric measurements as recommended by the WHO and other health organizations.

Sebo and circumferennce conducted extensive studies of the anthropometric measurement skills circumderence primary care circukference Even cifcumference training, Wais error was consistently highest for WHR and circumfsrence for weight and citcumference 13 Cirxumference potential value Wiast WHR as a health risk circujference is thus not being realized outside fircumference specialized Wiast laboratories and clinical cricumference.

Recent developments in computer vision now have the potential to transform the hop of biometrics, including Circumferejce. The possibility thus exists to accurately estimate Waisy using a smartphone hio based Proven and personalized weight loss computer vision algorithms.

The application analyzes color images taken ane various angles and andd a Convolutional Yip Network to predict body Waiwt and WHR. This bridges the gap circumfeence clinical measurements by professionals and often circumerence self-measurements Wsist home.

Over participants Hypoglycemic unawareness monitoring evaluated in the current study Supplementary Cricumference 3.

The Heart smart living dataset included men hlp women, the Human Solutions dataset included circumfreence and women, and the circumferrnce evaluation sample included 71 men and 83 women.

The demographic fircumference of these samples are summarized in Supplementary Note 9. Men had average WHRs that were larger than those in women ~0.

WHR measurements range for CSD is 0. The accuracy estimates for MeasureNet and self-measured WHR are presented in Table 1. Correlation between WHR measured by a trained staff member and WHR predicted by MeasureNet is shown in Fig.

left Correlation between WHR measured by a trained staff member and WHR predicted by MeasureNet. The dashed line is identity and the solid line is the fitted regression line.

right Bland-Altman analyses of the differences between WHR measured by a trained staff member and WHR predicted by MeasureNet. The direct SMPL mesh-based predictions are compared in Tables 2 and 3.

MeasureNet, with semantically segmented three views front, side and back as input and direct prediction, had the lowest MAE. Using three views as input to MeasureNet had lower error than using only the front view or front and side view. Using direct prediction had lower error than first reconstructing the body model and then extracting measurements from it.

Direct prediction allows the measurement of each body part to be independent of the space of global SMPL parameters and results in better prediction of subtle body shape details.

Additionally, using a silhouette as input to MeasureNet increased prediction error as compared to using a segmentation image as input. For Sengupta et al. Sex-specific model uses different model for different sex allowing the model to learn unique features for each sex.

Sex-neutral model uses the same model for both the sexes. Qualitative comparisons between predicted and ground truth meshes are shown in Fig. Head images were cropped for privacy reasons.

Additional comparisons for men and women are shown in Supplementary Figs. Qualitative comparisons of the SMPL mesh predicted by MeasureNet and state-of-the-art approaches for 3D human shape and pose estimation 1720 Images correspond to results presented in Tables 2 and 3.

The ground truth GT mesh is shown in the left. The noise distributions of MeasureNet predictions, self-measurements, and trained staff-measurements are plotted as histograms in Supplementary Figs. The noise standard deviations are shown in Table 4.

The standard deviation of noise in self-measurements was larger compared to MeasureNet and trained staff measurements. The smallest standard deviations, and thus noise, were for MeasureNet for both the men and women.

This is due to the remaining synthetic-to-real domain gap between training synthetic meshes and test distributions laser scanned meshes. As we improve the realism of synthetic training data, we expect this gap to reduce further.

This is due to the combination of synthetic-to-real domain gap and the measurement noise in tape measured ground truth. The current study confirms that accurate and reproducible estimates of the WHR can be acquired with a smartphone application.

Specifically, our developed MeasureNet application provided WHR estimates with respective MAEs and MAPEs of ~0. These MAEs and MAPEs were less than half those of self-measurements. These proof-of-concept observations, the first of their kind, indicate that smartphone applications such as MeasureNet can now fill the void in WHR measurements made in clinical and home settings.

The smartphone approach can potentially displace 3D scanning methods 18 that are more costly and impractical to implement outside of specialized research and clinical facilities.

Human shape and pose estimation are active areas of research in the computer vision and machine learning CVML communities. Most of the current approaches predict body shape using a learned model or fit body shape using an optimization-based approach with SMPL 19a parametric 3D body model given observations such as 2D key points, silhouettes, or images 20212223 Recent developments as reported by Sengupta et al.

In contrast to their approach, we focused directly on estimating body circumferences and derived measures such as the WHR, a strategy we found more accurate than estimating body circumferences from the reconstructed body model. Our MeasureNet model estimates circumferences and the WHR directly, and uses SMPL, the parametric 3D body model only as a regularizer during training.

This allowed the circumference predictions to be independent of the space of SMPL parameters. Several challenges needed to be overcome on the path to developing MeasureNet. First, MeasureNet needed to generalize to different body shapes and be invariant to lighting and background conditions, clothes worn, user distance from the smartphone, and smartphone type.

Our MeasureNet algorithms account for all of these factors and conditions that became apparent during the software development phase.

Another factor posing a development challenge was that training accurate CVML models required access to accurate ground truth measurements. Manual measurements of waist and hip circumferences, however, tend to be error prone as reported by Sebo et al.

On the other hand, using highly accurate 3D laser scanners to extract ground truth measurements is expensive and time consuming. We addressed both problems by training a CNN on realistic-looking synthetic data sampled according to an empirical distribution, and we demonstrated strong generalization high accuracy and repeatability to real, previously unseen test images.

Adding WHR estimates to clinical and self-evaluations improves health risk predictions beyond those of BMI and other currently available biometrics Larger visceral adipose tissue volumes and waist circumferences are associated with greater risks of adverse health outcomes 789 By contrast, larger subcutaneous gluteofemoral adipose tissue volumes and hip circumferences are associated with a reduced risk of developing multiple cardiovascular and metabolic outcomes 6.

WHR or the individual waist and hip circumferences can also be added to health outcome prediction models now in development by our group and others. Large-scale studies designed to identify health-risk genetic markers can use programs like MeasureNet to accurately capture participant shape using their own smartphones.

Anticipated camera advancements and future machine learning algorithm refinements over time will further expand the applicability of smartphone phenotyping methods. There are several limitations with our developed model that form the potential basis of future research.

As part of the realistic sampling process the current SMPL 3D mesh model was estimated using 3D scans covering the US general population and therefore is biased towards the average North American population. This kind of potential bias can be removed by including 3D scans of participants outside of the US when estimating the SMPL 3D mesh model.

A subset of participants In the CSD dataset had only one measurement taken by trained clinical staff. Therefore, the resulting ground truth measurement can be noisy and it can affect the accuracy metrics. The MeasureNet model is trained using synthetic training data. However, the current synthetic data generator can only represent the shape and pose of a minimally clothed body and fails to model complex topology of loose clothing.

This results in a synthetic-to-real domain gap that reduces the accuracy of MeasureNet. A more realistic synthetic data generator that can model loose clothing can help alleviate this issue. Further studies to understand the relationship between MeasureNet and health risks can help determine the desired accuracy level needed for an accurate health risk prediction.

Addressing this bias requires the inclusion of participants from underrepresented groups to foster a more balanced and equitable dataset. In conclusion, the current study fills a long-held gap in accurately and reproducibly quantifying the WHR, an extensively researched health-risk biometric, outside of specialized facilities.

The developed novel software, MeasureNet, can operate on conventional smartphones and thus vastly extend shape phenotyping capabilities to a large percentage of the global population, even to remote settings. Future studies are needed to extend software capabilities to populations beyond those in North America and to non-adult age groups.

The study hypothesis was tested in two phases. A smartphone application based on computer vision algorithms was developed in the first study phase.

: Waist and hip circumference

How should I measure waist and hips?

WHR or the individual waist and hip circumferences can also be added to health outcome prediction models now in development by our group and others. Large-scale studies designed to identify health-risk genetic markers can use programs like MeasureNet to accurately capture participant shape using their own smartphones.

Anticipated camera advancements and future machine learning algorithm refinements over time will further expand the applicability of smartphone phenotyping methods. There are several limitations with our developed model that form the potential basis of future research.

As part of the realistic sampling process the current SMPL 3D mesh model was estimated using 3D scans covering the US general population and therefore is biased towards the average North American population. This kind of potential bias can be removed by including 3D scans of participants outside of the US when estimating the SMPL 3D mesh model.

A subset of participants In the CSD dataset had only one measurement taken by trained clinical staff. Therefore, the resulting ground truth measurement can be noisy and it can affect the accuracy metrics. The MeasureNet model is trained using synthetic training data. However, the current synthetic data generator can only represent the shape and pose of a minimally clothed body and fails to model complex topology of loose clothing.

This results in a synthetic-to-real domain gap that reduces the accuracy of MeasureNet. A more realistic synthetic data generator that can model loose clothing can help alleviate this issue. Further studies to understand the relationship between MeasureNet and health risks can help determine the desired accuracy level needed for an accurate health risk prediction.

Addressing this bias requires the inclusion of participants from underrepresented groups to foster a more balanced and equitable dataset. In conclusion, the current study fills a long-held gap in accurately and reproducibly quantifying the WHR, an extensively researched health-risk biometric, outside of specialized facilities.

The developed novel software, MeasureNet, can operate on conventional smartphones and thus vastly extend shape phenotyping capabilities to a large percentage of the global population, even to remote settings.

Future studies are needed to extend software capabilities to populations beyond those in North America and to non-adult age groups. The study hypothesis was tested in two phases. A smartphone application based on computer vision algorithms was developed in the first study phase. The development of this algorithm, MeasureNet, is described in the methods section that follows.

The second phase involved testing MeasureNet performance in a series of experimental studies Supplementary Fig. First, the accuracy of MeasureNet and self-measurements were compared to flexible tape measurements taken by trained staff in a sample of healthy adults referred to as the Circumference Study Dataset CSD.

Accuracy metrics are defined in the Statistical Methods section. Circumferences were measured according to NHANES guidelines Supplementary Note 1. MeasureNet and self-measurements were compared to the ground truth tape measurements. A second experimental study involved comparison of MeasureNet to state-of-the-art approaches for three-dimensional 3D shape estimation.

Specifically, we compared MeasureNet, SPIN 20 , STRAPS 21 , and recent work by Sengupta et al. This dataset is referred to as the Human Solutions dataset. We had front-, side-, and back-viewpoint color images, height, and body weight for each participant along with their 3D laser scan.

The Skinned Multi-Person Linear SMPL model was fit to each 3D scan to estimate the shape and pose of the scan We extracted the ground truth circumferences from the fitted SMPL model at predefined locations corresponding to hip, waist, chest, thigh, calf and bicep as shown in Supplementary Figs.

Third, we measured the noise in tape measurements compared to MeasureNet using data from a subset of healthy men and women evaluated in the CSD dataset. Each person was measured twice by a trained staff member staff measurements and two sets of images were also taken by the staff member MeasureNet.

Each person also measured themselves twice using measuring tape self-measurements. For staff measurements, each person was measured by two different staff members to ensure minimal correlation between consecutive measurements.

We used the difference between two consecutive measurements to analyze the noise distributions of staff-measurements, MeasureNet, and self-measurements.

Lastly, we compared accuracy and repeatability of our approach to the ground truth on a synthetic dataset. We created the dataset by rendering each synthetically generated mesh using different camera parameters height, depth, focal length and different body poses placed in front of randomly selected backgrounds.

The dataset was generated using synthetic meshes of men and women. This data is referred to as the Synthetic Dataset. We considered all of the renderings for a particular mesh to measure repeatability robustness of our approach.

Repeatability metrics are defined in the Statistical Methods section. Different factors such as background, camera parameters, and body pose changes were present across multiple renderings of the same mesh. A repeatable approach should ideally predict the same output for different renderings of the same mesh.

We also use this dataset to evaluate accuracy given all of the renderings and their ground truth. A flow diagram showing the multiple study human participant evaluations is presented in Supplementary Fig.

Consent was obtained for the collection and use of the personal data voluntarily provided by the participants during the study. An overview of our approach for measuring WHR is shown in Fig.

The user inputs their height, weight, and sex into their smartphone. Voice commands from the application then guide the person to capture front-, side-, and back-viewpoint color images.

The images are then automatically segmented into 23 regions such as the background, upper left leg, lower right arm, and abdomen by a specialized convolutional neural network CNN trained to perform semantic image segmentation.

Intuitively, this step suppresses irrelevant background features, provides additional spatial context for body parts, and affords important benefits during model training, which we will discuss subsequently.

Overview of the anthropometric body dimension measurement approach. The user first enters their height, weight, and sex into the smartphone application. Voice commands then position the user for capture of front, side, and back color images. The images are then segmented into semantic regions using a segmentation network.

The segmentation results are then passed to a second network referred to as MeasureNet that predicts WHR and body circumferences. Each input is passed through a modified Resnet network which is then concatenated and passed through Resnet-4, self-attention block and a fully connected layer FC layer before predicting WHR and body circumferences.

Resnet is modified to include Squeeze-Excitation blocks SE. CNN, convoluted neural network. Synthetic images are used to train this model.

Real images are used during inference after the model is trained. Color images shown in the figure are synthetically generated. Features from each view are then concatenated together and fed to a Resnet-4 network and a self-attention network 28 followed by a fully connected layer to predict body circumferences and WHR as illustrated in Fig.

Direct prediction of circumferences: Predicting body circumferences directly outperformed first reconstructing the body model 3D SMPL mesh 19 and then extracting measurements from it. Number of input views: Using three views of the user as input improved the accuracy as compared to using one or two views of the user.

Tables 2 and 3 shows the improvement in accuracy with increasing number of input views and using direct prediction of circumferences. Swish vs. ReLU activations: Resnet typically uses ReLU activations Self-Attention and Squeeze-Excitation for non-local interactions: Including squeeze-excitation blocks 27 with Resnet branches for cross-channel attention and a self-attention block 28 after the Resnet-4 block allowed the model to learn non-local interactions e.

Supplementary Note 4 shows the accuracy improvements due to self-attention, squeeze-excitation and Swish activation blocks. Sex-specific model: Training separate, sex-specific MeasureNet models further improved accuracy. As we show in Tables 2 and 3 , sex-specific models have lower prediction errors compared to sex-neutral models.

MeasureNet predicts multiple outputs, such as body shape, pose, camera, volume, and 3D joints. Predicting multiple outputs in this way multi-tasking has been shown to improve accuracy for human-centric computer vision models Additionally, MeasureNet predicts circumferences and WHR.

Some of the outputs e. The inputs and outputs to MeasureNet are shown in Fig. Important MeasureNet outputs related to circumferences and WHR are:.

Dense Measurements: MeasureNet predicts circumferences defined densely over the body. Details are presented in Supplementary Note 2. Dense measurements reduce the output domain gap between synthetic and ground truth by finding the circumference ring out of circumference rings that minimize the error between tape measurements taken by trained staff and synthetic measurements at a particular ring.

The table in Supplementary Note 2 shows that the predicted error at the optimal circumference ring is the lowest and therefore it is well-aligned with the staff measurements. WHR Prediction: Our model can predict WHR both indirectly by taking ratios of waist and hip estimates and directly i.

WHR related outputs are shown in Fig. The final WHR prediction is an ensemble result, i. As shown in Supplementary Note 5 , we found that the ensemble prediction had the lowest repeatability error most robust without losing accuracy as compared to individual predictions via regression, classification or taking the ratio of waist and hip.

We include training losses on shape, pose, camera, 3D joints, mesh volume, circumferences and waist-hip ratio through classification and regression. The losses are defined in Supplementary Note 6.

Since we have multiple loss functions, hand-tuning each loss weight is expensive and fragile. Based on Kendall et al. Supplementary Note 7 shows the improvement in accuracy when using uncertainty-based loss weighting during training.

MeasureNet was trained with synthetic data. Using synthetic data helps avoid expensive, manual data collection and annotation. However, it comes at the cost of synthetic-to-real domain gap, which leads to a drop in accuracy between a model trained with synthetic data but tested on real data.

We reduced the domain gap by simulating a realistic image capture process on realistic 3D bodies with lifelike appearance texture.

Examples of synthesized body shapes for different BMI values are shown in Fig. The SMPL mesh model 19 is parameterized by shape and pose parameters. To encourage realism in the synthetic dataset and minimize domain gap, it was important to sample only realistic parameters and to match the underlying distribution of body shapes of the target population.

Our sampling process was used to generate approximately one million 3D body shapes with ground truth measurements, and consisted of three steps:. Fit SMPL parameters: Given an initial set of 3D scans by a laser scanner as a bootstrapping dataset, we first fitted the SMPL model to all scans 19 to establish a consistent topology across bodies and to convert each 3D shape into a low-dimensional parametric representation.

Due to the high fidelity of this dataset and the variation across participants, we used this dataset as a proxy for the North American demographic distribution of body shapes and poses. Cluster samples: We recorded the sex and weight of each scanned subject, and extracted a small set of measurements from the scan, such as height, and hip, waist, chest, thigh, and bicep circumferences.

We trained a sex-specific Gaussian Mixture Model GMM to categorize the measurements into 4 clusters we found the optimal number of clusters using Bayesian information criterion. Sample the clusters using importance sampling: Finally, we used importance sampling to match the likelihood of sampling a scan to match the distribution across all clusters.

This allowed us to create a large synthetic dataset of shape and pose parameters whose underlying distribution matched the diversity of the North American population.

NHANES was collected by the Center for Disease Control and Prevention between the years and and consists of the demographics, body composition and medical conditions of about , unique participants from North American population. Valid renderings are images in which body shapes are visible from at least the top of the head to the knees.

This ensures that the sampled camera parameters match the realistic distribution of camera parameters observed for real users. An example of realistic sampling of shape, pose, and camera are shown in Fig. Example of realistic sampling of body shape, pose, and camera simulating the image capture process.

Once body shape, body pose, and camera orientation were sampled, we transferred the texture from a real person onto the 3D mesh, placed it in front of a randomly selected background image of an indoor scene and rendered a realistic color rendering given the camera pose.

The textured and realistic color rendering was then segmented using the segmentation network that was used as an input to train MeasureNet. The ground truth targets used to train MeasureNet were extracted from sampled synthetic mesh. Transferring the texture from a real person allowed us to generate diverse and realistic samples and had two main advantages.

First, we transferred the texture from a real person which avoided manually generating realistic and diverse textures. Through this method, we generated a texture library of forty thousand samples using trial users different from test-time users.

Second, since we segmented the color images using a trained segmentation model, we did not have to include additional segmentation noise augmentation 30 during training.

This is in contrast to the existing methods 21 , 30 that add segmentation noise to the synthetic image in order to simulate the noisy segmentation output during test-time.

We used the segmented image as input to MeasureNet instead of a textured color image to force MeasureNet to not use any lighting or background-related information from the synthetic training data which can have different distributions during training and testing.

In Supplementary Note 8 , we show that training a model with textured color image generalizes poorly when tested on real examples as compared to segmented images. Intuitively, we believe this is the case because synthetic textured color images lack realism on their own, but generate realistic segmentation results when passed through a semantic segmentation model.

Overall, the texture transfer process consisted of two steps. First, we created a texture library by extracting textures from real images using our participant pipeline. We extracted around forty thousand texture images from trial users.

Second, given the texture images, we rendered a randomly sampled synthetic mesh using a random texture image, rendered it on a random background, and passed it through the segmentation. The process of realistic textured rendering by transferring the texture from a real person synthetic in this case is shown in Fig.

The renderings when segmented using fixed segmentation network were used as input to train MeasureNet. The end-to-end training process for MeasureNet is shown in Fig. The ground truth targets used to train MeasureNet are extracted from sampled synthetic mesh. Generation of realistic color mesh renderings by transferring texture from a real person synthetic in this example.

The renderings when segmented using a fixed network are used as input to train MeasureNet. Training of MeasureNet model using realistic synthetic data.

Given a sampled synthetic mesh, realistic synthetic images are generated that are segmented. The segmented images are used as input to MeasureNet and corresponding predictions are compared against the ground truth extracted from synthetic mesh.

The accuracy of MeasureNet and self-measurements were compared to trained staff-measured ground truth estimates in the CSD using mean absolute error MAE; Eq. MAPE is similar to MAE but calculates mean relative percentage error.

G i is the ground truth, P i is the prediction, and n is the number of users. MAE was also used for comparing MeasureNet to other state-of-the-art approaches for estimating circumferences and WHR. Zhang C, Rexrode KM, van Dam RM, Li TY, Hu FB.

Abdominal obesity and the risk of all-cause, cardiovascular, and cancer mortality: sixteen years of follow-up in US women. Zhang X, Shu XO, Yang G, et al. Abdominal adiposity and mortality in Chinese women.

Arch Intern Med. Despres JP. Health consequences of visceral obesity. Ann Med. de Koning L, Merchant AT, Pogue J, Anand SS. Waist circumference and waist-to-hip ratio as predictors of cardiovascular events: meta-regression analysis of prospective studies.

Heart J. Vazquez G, Duval S, Jacobs DR, Jr. Qiao Q, Nyamdorj R. Is the association of type II diabetes with waist circumference or waist-to-hip ratio stronger than that with body mass index?

Eur J Clin Nutr. Grundy SM, Cleeman JI, Daniels SR, et al. International Diabetes Federation. Mean hip circumference ranged from cm and from cm in men and women, respectively, and mean WHR from 0.

Similar results were obtained for hip circumference. Conclusion: Considerable variation in waist and hip circumferences and WHR were observed among the study populations. Waist circumference and WHR, both of which are used as indicators of abdominal obesity, seem to measure different aspects of the human body: waist circumference reflects mainly the degree of overweight whereas WHR does not.

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There were 98 female participants. The age range was between 16 and Their educational and socio-economic backgrounds nearly all middle class were fairly homogenous, and none had previously participated in any studies involving female body shape or attractiveness.

It was predicted that the effect of breast size on judgment of attractiveness and age estimation would be dependent on overall body fat and the size of the waist-to-hip ratio.

All the participants were given a booklet with eight pictures in total. Each figure was identified as heavy or slender, feminine WHR or masculine WHR, and large-breasted or small-breasted.

When ratings of the figures' attractiveness were made, generally it appeared that bust size, WHR, and their weight were all important contributory elements.

The female participants rated the figures with a low WHR as more attractive, healthy, feminine-looking, and in the case of the heavy figure, more kind and understanding than did male participants. This is a particularly interesting finding, as most previous studies report that young women idealize female bodies solely on the basis of thinness.

As far as the breast sizes of the slender figures is concerned, whether they had large or small breasts did not appear to have any effect on the ratings of attractiveness or kindness or understanding, and having larger breasts only increased the mean ratings of health and femininity very slightly.

However, a heavy figure with a high WHR and a large bust was rated as the least attractive and healthy by all participants. Waist—hip ratio is also a reliable cue to one's sex and it is hypothesised that the "individuals who represent a mismatch based on the cue provided by WHR e.

A University of Wroclaw study of around one thousand women across different cultures—designed to address the conflicting theories—concluded that an attractive WHR is not a predictor of peak fertility, but actually a predictor of the onset of fertility and therefore a predictor of maximal long term reproductive potential and minimal chance of raising a competing male's children.

Research has found waist-to-chest ratio to be the largest determinant of male attractiveness, with body mass index and waist-to-hip ratio not as significant. A number of studies have been carried out with focus on food composition of diets in relation to changes in waist circumference adjusted for body mass index.

Whole-grain, ready-to-eat, oat cereal diets reduce low-density lipoprotein cholesterol and waist circumference in overweight or obese adults more than low-fibre control food diets. Weight loss did not vary between groups. In an American sample of healthy men and women participating in the ongoing 'Baltimore Longitudinal Study of Aging', the mean annual increase [with age] in waist circumference was more than 3 times as great for the participants in the white-bread cluster compared with the participants using a diet that is high in fruit, vegetables, reduced-fat dairy and whole grains and is low in red or processed meat, fast food and soft drink.

A study suggests that a dietary pattern high in fruit and dairy and low in white bread, processed meat, margarine, and soft drinks may help to prevent abdominal fat accumulation.

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Food composition of the diet in relation to changes in waist circumference adjusted for body mass index. PLoS ONE. My Plate. Move more; sit less. Centers for Disease Control and Prevention. By Cara Rosenbloom, RD Cara Rosenbloom RD is a dietitian, journalist, book author, and the founder of Words to Eat By, a nutrition communications company in Toronto, ON.

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By Cara Rosenbloom RD is a dietitian, journalist, book author, and the founder of Words to Eat By, a nutrition communications company in Toronto, ON. Cara Rosenbloom, RD. Learn about our editorial process.

Learn more. Medical Reviewers confirm the content is thorough and accurate, reflecting the latest evidence-based research. Content is reviewed before publication and upon substantial updates. Medically reviewed by Anisha Shah, MD.

Learn about our Medical Review Board. Table of Contents View All. Table of Contents. Why Does WHR Matter? How to Calculate WHR Ratio. Waist to Hip Ratio Chart.

WHR Ratio Examples. Using WHR to Improve Your Health. Frequently Asked Questions. Waist to Hip Ratio Risk Level Chart Health Risk Level Female Male Low 0. How to Take Body Measurements.

Frequently Asked Questions What is a healthy waist-to-hip ratio? How do you measure your waist and hips? How can you improve your waist-to-hip ratio? Verywell Fit uses only high-quality sources, including peer-reviewed studies, to support the facts within our articles.

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Publication types There were significantly increased RR and RD for all measures and health care services, for example, WC-defined obesity was associated with an increased risk of hospitalization RR: 1. Health Conditions Health Products Discover Tools Connect. The noise standard deviations are shown in Table 4. Meta-regression of study level predictors mean age, mean follow-up, type of data did not account for significant heterogeneity in beta-coefficients data not shown. Measurements can be recorded in either centimeters cm or inches in without affecting the ratio. Online ISSN Print ISSN X Copyright © European Society of Cardiology.
BMI, Waist Circumference, or Waist-To-Hip Ratio? Citcumference figure was identified as heavy Waist and hip circumference slender, feminine WHR Wast masculine WHR, and large-breasted or fueling options for swimming. Finally, the small number of studies and significant heterogeneity limited our ability to detect small differences in risk. It can also help predict your risk of heart disease and diabetes. January Impact of obesity on metabolism in men and women.
Measuring Obesity Navbar Dircumference Filter European Wast Journal This issue ESC Publications Cardiovascular Medicine Books Anf Oxford Academic Mobile Enter search term Search. And fueling options for swimming you should Waist and hip circumference able Healthy snacks ideas see your waist-to-hip ratio. Associations of general and abdominal obesity with multiple health outcomes in older women: the Iowa Women's Health Study. Scientific Reports. Correlation between WHR measured by a trained staff member and WHR predicted by MeasureNet is shown in Fig. Equations are used to estimate body fat percentage and fat-free mass. Non-local neural networks.
Waist and hip circumference Cara Rosenbloom RD is cifcumference dietitian, journalist, book author, and the founder Waist and hip circumference Words to Eat By, a nutrition communications company in Toronto, ON. Anisha Shah, MD, Waist and hip circumference a Hydrating sports drinks internist, Waish cardiologist, circumfwrence fellow of the American College of Cardiology. The WHR Waist and hip circumference involves circumferenfe a tape measure to check the size of your waist and hips. WHR is found by dividing circumference of the waist by the circumference of the hips. Calculating WHR is easy, quick and doesn't cost anything if you already have a tape measure! You may have heard of body mass index BMIwhich calculates the ratio of your weight to your height. Many researchers find little value in BMI as a measure of health, because it doesn't help determine how much fat is stored on your waist, hips, and buttocks.

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