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Comprehensive End-to-End Workflow for Visceral Adipose Tissue and Subcutaneous Adipose Tissue quantification: Use Case to improve MRI accessibility

机译:用于内脏脂肪组织和皮下脂肪组织量化的全面的端到端工作流程:用例改善MRI可访问性

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Studies prove the correlation between Body Fat distribution and insulin resistance which is a major risk factor for Type 2 diabetes and cardiovascular diseases (CVD). Educating individuals with more accurate measures of fat distribution outside fat percentage and body mass index (BMI) along with preventive solutions to susceptible conditions encourage better lifestyle choices and routines. Essential fat compartments that constitute the total fat distribution are visceral adipose tissue (VAT), superficial subcutaneous adipose tissue (SSAT) and deep subcutaneous adipose tissue (DSAT) which can be measured using whole-body MRI from head to foot. We propose a two-stage solution: rapid Dixon sequence acquisition, fat compartment segmentation. A clinically standard and predefined protocol is designed to automate the acquisition with optimal pulse sequence parameters to satisfy any time constraint. Two separate fully convolutional networks (UNet) with attention gates trained on our in-house dataset of 53 patients are used to segment VAT and SAT respectively. Further, the SAT segment is sub-classified into SSAT and DSAT by detecting the fascia superficialis using modified level sets. The models are capable of segmenting VAT, DSAT, and SSAT from head to foot without any manual intervention. Our method achieves a dice score of 0.868 for SAT segmentation and 0.9107 for VAT segmentation. The whole pipeline from data acquisition to reporting can be completed in under 20 minutes. Furthermore, our experiments show that our approach to estimating the segmentations are better than similar deep learning models trained on abdomen MRI. Our study demonstrates a use case of how MRI as a modality can be used outside of a typical clinical setting and set up as an upstream imaging solution to make it a more accessible tool for health evaluation/screening for the public.
机译:研究证明了身体脂肪分布与胰岛素抗性之间的相关性,这是2型糖尿病和心血管疾病(CVD)的主要危险因素。教育个人具有更准确的脂肪分布措施外部脂肪百分比和体重指数(BMI)以及对易感条件的预防解决方案鼓励更好的生活方式选择和惯例。构成总脂肪分布的基本脂肪隔室是内脏脂肪组织(VAT),表面皮下脂肪组织(SSAT)和深皮脂脂肪组织(DSAT),其可以使用全体MRI从头到脚测量。我们提出了一种两级解决方案:快速迪克森序列采集,脂肪隔室分割。临床标准和预定义的协议旨在使采集具有最佳脉冲序列参数来满足任何时间约束。使用53名患者的内部数据集培训的两个独立的全卷积网络(UNET),分别用于分别进行增值税和SAT。此外,SAT段通过使用修改水平集检测Fascia Superficiaris来分类为SSAT和DSAT。该模型能够从头到脚分割VAT,DSAT和SSAT,而无需任何手动干预。我们的方法对于SAT分割而达到0.868的骰子得分,0.9107用于增值税分割。从数据采集到报告的整个管道可以在20分钟内完成。此外,我们的实验表明,我们的估计分割方法优于腹部MRI培训的类似深度学习模型。我们的研究展示了如何使用MRI作为模态的用例,可以在典型的临床环境之外使用,并设置为上游成像解决方案,以使其成为公众的健康评估/筛选更可访问的工具。

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