Literature DB >> 34617030

Automated Segmentation of Visceral, Deep Subcutaneous, and Superficial Subcutaneous Adipose Tissue Volumes in MRI of Neonates and Young Children.

Yeshe Manuel Kway1, Kashthuri Thirumurugan1, Mya Thway Tint1, Navin Michael1, Lynette Pei-Chi Shek1, Fabian Kok Peng Yap1, Kok Hian Tan1, Keith M Godfrey1, Yap Seng Chong1, Marielle Valerie Fortier1, Ute C Marx1, Johan G Eriksson1, Yung Seng Lee1, S Sendhil Velan1, Mengling Feng1, Suresh Anand Sadananthan1.   

Abstract

PURPOSE: To develop and evaluate an automated segmentation method for accurate quantification of abdominal adipose tissue (AAT) depots (superficial subcutaneous adipose tissue [SSAT], deep subcutaneous adipose tissue [DSAT], and visceral adipose tissue [VAT]) in neonates and young children.
MATERIALS AND METHODS: This was a secondary analysis of prospectively collected data, which used abdominal MRI data from Growing Up in Singapore Towards healthy Outcomes, or GUSTO, a longitudinal mother-offspring cohort, to train and evaluate a convolutional neural network for volumetric AAT segmentation. The data comprised imaging volumes of 333 neonates obtained at early infancy (age ≤2 weeks, 180 male neonates) and 755 children aged either 4.5 years (n = 316, 150 male children) or 6 years (n = 439, 219 male children). The network was trained on images of 761 randomly selected volumes (neonates and children combined) and evaluated on 100 neonatal volumes and 227 child volumes by using 10-fold validation. Automated segmentations were compared with expert-generated manual segmentation. Segmentation performance was assessed using Dice scores.
RESULTS: When the model was tested on the test datasets across the 10 folds, the model had strong agreement with the ground truth for all testing sets, with mean Dice similarity scores for SSAT, DSAT, and VAT, respectively, of 0.960, 0.909, and 0.872 in neonates and 0.944, 0.851, and 0.960 in children. The model generalized well to different body sizes and ages and to all abdominal levels.
CONCLUSION: The proposed segmentation approach provided accurate automated volumetric assessment of AAT compartments on MR images of neonates and children.Keywords Pediatrics, Deep Learning, Convolutional Neural Networks, Water-Fat MRI, Image Segmentation, Deep and Superficial Subcutaneous Adipose Tissue, Visceral Adipose TissueClinical trial registration no. NCT01174875 Supplemental material is available for this article. © RSNA, 2021. 2021 by the Radiological Society of North America, Inc.

Entities:  

Keywords:  Convolutional Neural Networks; Deep Learning; Deep and Superficial Subcutaneous Adipose Tissue; Image Segmentation; Pediatrics; Visceral Adipose Tissue; Water-Fat MRI

Year:  2021        PMID: 34617030      PMCID: PMC8489452          DOI: 10.1148/ryai.2021200304

Source DB:  PubMed          Journal:  Radiol Artif Intell        ISSN: 2638-6100


  26 in total

1.  Body fat partitioning does not explain the interethnic variation in insulin sensitivity among Asian ethnicity: the Singapore adults metabolism study.

Authors:  Chin Meng Khoo; Melvin Khee-Shing Leow; Suresh Anand Sadananthan; Radiance Lim; Kavita Venkataraman; Eric Yin Hao Khoo; S Sendhil Velan; Yu Ting Ong; Ravi Kambadur; Craig McFarlane; Peter D Gluckman; Yung Seng Lee; Yun Seng Lee; Yap Seng Chong; E Shyong Tai
Journal:  Diabetes       Date:  2013-12-18       Impact factor: 9.461

2.  Predicting obesity in young adulthood from childhood and parental obesity.

Authors:  R C Whitaker; J A Wright; M S Pepe; K D Seidel; W H Dietz
Journal:  N Engl J Med       Date:  1997-09-25       Impact factor: 91.245

3.  Validation of volumetric and single-slice MRI adipose analysis using a novel fully automated segmentation method.

Authors:  Bryan T Addeman; Shelby Kutty; Thomas G Perkins; Abraam S Soliman; Curtis N Wiens; Colin M McCurdy; Melanie D Beaton; Robert A Hegele; Charles A McKenzie
Journal:  J Magn Reson Imaging       Date:  2014-01-15       Impact factor: 4.813

4.  Automated segmentation of visceral and subcutaneous (deep and superficial) adipose tissues in normal and overweight men.

Authors:  Suresh Anand Sadananthan; Bhanu Prakash; Melvin Khee-Shing Leow; Chin Meng Khoo; Hong Chou; Kavita Venkataraman; Eric Y H Khoo; Yung Seng Lee; Peter D Gluckman; E Shyong Tai; S Sendhil Velan
Journal:  J Magn Reson Imaging       Date:  2014-05-07       Impact factor: 4.813

5.  A two-step convolutional neural network based computer-aided detection scheme for automatically segmenting adipose tissue volume depicting on CT images.

Authors:  Yunzhi Wang; Yuchen Qiu; Theresa Thai; Kathleen Moore; Hong Liu; Bin Zheng
Journal:  Comput Methods Programs Biomed       Date:  2017-03-21       Impact factor: 5.428

6.  Contributions of total body fat, abdominal subcutaneous adipose tissue compartments, and visceral adipose tissue to the metabolic complications of obesity.

Authors:  S R Smith; J C Lovejoy; F Greenway; D Ryan; L deJonge; J de la Bretonne; J Volafova; G A Bray
Journal:  Metabolism       Date:  2001-04       Impact factor: 8.694

7.  Association Between Early Life Weight Gain and Abdominal Fat Partitioning at 4.5 Years is Sex, Ethnicity, and Age Dependent.

Authors:  Suresh Anand Sadananthan; Mya Thway Tint; Navin Michael; Izzuddin M Aris; See Ling Loy; Kuan Jin Lee; Lynette Pei-Chi Shek; Fabian Kok Peng Yap; Kok Hian Tan; Keith M Godfrey; Melvin Khee-Shing Leow; Yung Seng Lee; Michael S Kramer; Peter D Gluckman; Yap Seng Chong; Neerja Karnani; Christiani Jeyakumar Henry; Marielle Valerie Fortier; S Sendhil Velan
Journal:  Obesity (Silver Spring)       Date:  2019-02-01       Impact factor: 5.002

8.  Automated quantification of abdominal adiposity by magnetic resonance imaging.

Authors:  Jingjing Sun; Bugao Xu; Jeanne Freeland-Graves
Journal:  Am J Hum Biol       Date:  2016-04-28       Impact factor: 1.937

9.  Abdominal adipose tissue compartments vary with ethnicity in Asian neonates: Growing Up in Singapore Toward Healthy Outcomes birth cohort study.

Authors:  Mya Thway Tint; Marielle V Fortier; Keith M Godfrey; Borys Shuter; Jeevesh Kapur; Victor S Rajadurai; Pratibha Agarwal; Amutha Chinnadurai; Krishnamoorthy Niduvaje; Yiong-Huak Chan; Izzuddin Bin Mohd Aris; Shu-E Soh; Fabian Yap; Seang-Mei Saw; Michael S Kramer; Peter D Gluckman; Yap-Seng Chong; Yung-Seng Lee
Journal:  Am J Clin Nutr       Date:  2016-04-06       Impact factor: 7.045

Review 10.  Lifetime risk: childhood obesity and cardiovascular risk.

Authors:  Julian Ayer; Marietta Charakida; John E Deanfield; David S Celermajer
Journal:  Eur Heart J       Date:  2015-03-24       Impact factor: 29.983

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