Computational facial analysis for rare Mendelian disorders

IF 2.8 3区 医学 Q2 GENETICS & HEREDITY American Journal of Medical Genetics Part C: Seminars in Medical Genetics Pub Date : 2023-08-16 DOI:10.1002/ajmg.c.32061
Tzung-Chien Hsieh, Peter M. Krawitz
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引用次数: 1

Abstract

With the advances in computer vision, computational facial analysis has become a powerful and effective tool for diagnosing rare disorders. This technology, also called next-generation phenotyping (NGP), has progressed significantly over the last decade. This review paper will introduce three key NGP approaches. In 2014, Ferry et al. first presented Clinical Face Phenotype Space (CFPS) trained on eight syndromes. After 5 years, Gurovich et al. proposed DeepGestalt, a deep convolutional neural network trained on more than 21,000 patient images with 216 disorders. It was considered a state-of-the-art disorder classification framework. In 2022, Hsieh et al. developed GestaltMatcher to support the ultra-rare and novel disorders not supported in DeepGestalt. It further enabled the analysis of facial similarity presented in a given cohort or multiple disorders. Moreover, this article will present the usage of NGP for variant prioritization and facial gestalt delineation. Although NGP approaches have proven their capability in assisting the diagnosis of many disorders, many limitations remain. This article will introduce two future directions to address two main limitations: enabling the global collaboration for a medical imaging database that fulfills the FAIR principles and synthesizing patient images to protect patient privacy. In the end, with more and more NGP approaches emerging, we envision that the NGP technology can assist clinicians and researchers in diagnosing patients and analyzing disorders in multiple directions in the near future.

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罕见孟德尔疾病的计算面部分析。
随着计算机视觉的进步,计算面部分析已成为诊断罕见疾病的强大而有效的工具。这项技术也被称为下一代表型(NGP),在过去十年中取得了显著进展。本文将介绍三种关键的NGP方法。2014年,Ferry等人首次提出了针对八种综合征进行训练的临床面部表型空间(CFPS)。5之后 多年来,Gurovich等人提出了DeepGestalt,这是一种在21000多张患有216种疾病的患者图像上训练的深度卷积神经网络。它被认为是最先进的疾病分类框架。2022年,Hsieh等人开发了格式塔匹配器,以支持DeepGestalt中不支持的超罕见和新型疾病。它进一步实现了对给定队列或多种疾病中面部相似性的分析。此外,本文将介绍NGP在变体优先排序和面部格式塔描绘中的应用。尽管NGP方法已证明其有能力帮助诊断许多疾病,但仍有许多局限性。本文将介绍两个未来的方向,以解决两个主要的局限性:为满足FAIR原则的医学成像数据库实现全球合作,以及合成患者图像以保护患者隐私。最后,随着越来越多的NGP方法的出现,我们设想在不久的将来,NGP技术可以帮助临床医生和研究人员从多个方向诊断患者和分析疾病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.00
自引率
0.00%
发文量
42
审稿时长
>12 weeks
期刊介绍: Seminars in Medical Genetics, Part C of the American Journal of Medical Genetics (AJMG) , serves as both an educational resource and review forum, providing critical, in-depth retrospectives for students, practitioners, and associated professionals working in fields of human and medical genetics. Each issue is guest edited by a researcher in a featured area of genetics, offering a collection of thematic reviews from specialists around the world. Seminars in Medical Genetics publishes four times per year.
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My Journey With Arthrogryposis and Some of the People Who Made a Difference. Everyone Is a Tomato: Metagnostic Narratives of Genetic Revelation. Correction to "Experiences With Offering Pro Bono Medical Genetics Services in the West Indies: Benefits to Patients, Physicians, and the Community". Family Lore, a Variant of Uncertain Significance, and CADASIL. Pink, White, and Probability.
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