基于oct评估视网膜结构数据和可解释人工智能的RRMS早期诊断新方法。

IF 2.6 3区 医学 Q2 OPHTHALMOLOGY
Miguel Ortiz, Ana Pueyo, Francisco J Dongil, Luciano Boquete, Eva M Sánchez-Morla, Rafael Barea, Juan M Miguel-Jimenez, Almudena López-Dorado, Elisa Vilades, María J Rodrigo, Beatriz Cordon, Elena Garcia-Martin
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引用次数: 0

摘要

目的:本研究的目的是提供一种在早期多发性硬化症(MS)自动诊断背景下对光学相干断层扫描(OCT)评估的视网膜数据进行分类的方法,并提供决策解释。方法:使用的数据库包含79例新近诊断为复发-缓解型多发性硬化症(RRMS)且无视神经炎病史的患者和69例年龄匹配的健康对照受试者的记录。对黄斑视网膜神经纤维层(mRNFL)、黄斑神经节细胞层(mGCL)、黄斑内丛状层(mIPL)、黄斑视网膜内复合层(mIRL)的厚度(平均左右眼值及眼间差)进行分析,将黄斑区域划分为6个分析区。将递归特征提取(RFE)和Shapley加性解释(SHAP)相结合,对相关特征进行排序,并选择使分类器(支持向量机[SVM])性能最大化的子集。结果:在最初的48个特征中,有20个特征被识别为最大分类器准确率(n = 0.9257)。SHAP值表明,平均厚度的相关性大于眼间差异,mGCL和mRNFL是影响最大的结构,周围乳头状束和颞上象限是受影响最大的区域。结论:该方法提高了早期RRMS自动诊断的成功率,提高了临床决策的透明度。翻译相关性:使用OCT数据进行视网膜结构评估可以成为诊断早期ms的一种无创手段。这种新的高精度和高可解释性的分析方法可以在大多数医院和医疗中心实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
New Method of Early RRMS Diagnosis Using OCT-Assessed Structural Retinal Data and Explainable Artificial Intelligence.

Purpose: The purpose of this study was to provide the development of a method to classify optical coherence tomography (OCT)-assessed retinal data in the context of automatic diagnosis of early-stage multiple sclerosis (MS) with decision explanation.

Methods: The database used contains recordings from 79 patients with recently diagnosed relapsing-remitting multiple sclerosis (RRMS) and no history of optic neuritis and from 69 age-matched healthy control subjects. Analysis was performed on the thicknesses (average right and left eye value and inter-eye difference) of the macular retinal nerve fiber layer (mRNFL), macular ganglion cell layer (mGCL), macular inner plexiform layer (mIPL), and macular inner retinal complex layer (mIRL), dividing the macular area into six analysis zones. Recursive feature extraction (RFE) and Shapley additive explanations (SHAP) are combined to rank relevant features and select the subset that maximizes classifier (support vector machine [SVM]) performance.

Results: Of the initial 48 features, 20 were identified as maximizing classifier accuracy (n = 0.9257). The SHAP values indicate that average thickness has greater relevance than inter-eye difference, that the mGCL and mRNFL are the most influential structures, and that the peripheral papillomacular bundle and the supero-temporal quadrant are the zones most affected.

Conclusions: This approach improves the success rate of automatic diagnosis of early-stage RRMS and enhances clinical decision making transparency.

Translational relevance: Retinal structure assessment using OCT data could constitute a noninvasive means of diagnosing early-stage MS. This new high-accuracy and high-explainability method of analysis can be implemented in most hospitals and healthcare centers.

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来源期刊
Translational Vision Science & Technology
Translational Vision Science & Technology Engineering-Biomedical Engineering
CiteScore
5.70
自引率
3.30%
发文量
346
审稿时长
25 weeks
期刊介绍: Translational Vision Science & Technology (TVST), an official journal of the Association for Research in Vision and Ophthalmology (ARVO), an international organization whose purpose is to advance research worldwide into understanding the visual system and preventing, treating and curing its disorders, is an online, open access, peer-reviewed journal emphasizing multidisciplinary research that bridges the gap between basic research and clinical care. A highly qualified and diverse group of Associate Editors and Editorial Board Members is led by Editor-in-Chief Marco Zarbin, MD, PhD, FARVO. The journal covers a broad spectrum of work, including but not limited to: Applications of stem cell technology for regenerative medicine, Development of new animal models of human diseases, Tissue bioengineering, Chemical engineering to improve virus-based gene delivery, Nanotechnology for drug delivery, Design and synthesis of artificial extracellular matrices, Development of a true microsurgical operating environment, Refining data analysis algorithms to improve in vivo imaging technology, Results of Phase 1 clinical trials, Reverse translational ("bedside to bench") research. TVST seeks manuscripts from scientists and clinicians with diverse backgrounds ranging from basic chemistry to ophthalmic surgery that will advance or change the way we understand and/or treat vision-threatening diseases. TVST encourages the use of color, multimedia, hyperlinks, program code and other digital enhancements.
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