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基于机器学习的荧光光学成像特征选择用于特定风湿性疾病的鉴别诊断

Fluorescence optical imaging feature selection with machine learning for differential diagnosis of selected rheumatic diseases.

作者信息

Rothe Felix, Berger Jörn, Welker Pia, Fiebelkorn Richard, Kupper Stefan, Kiesel Denise, Gedat Egbert, Ohrndorf Sarah

机构信息

Telematics Research Group, Wildau Technical University of Applied Sciences, Wildau, Germany.

Xiralite GmbH, Berlin, Germany.

出版信息

Front Med (Lausanne). 2023 Aug 21;10:1228833. doi: 10.3389/fmed.2023.1228833. eCollection 2023.

Abstract

BACKGROUND AND OBJECTIVE

Accurate and fast diagnosis of rheumatic diseases affecting the hands is essential for further treatment decisions. Fluorescence optical imaging (FOI) visualizes inflammation-induced impaired microcirculation by increasing signal intensity, resulting in different image features. This analysis aimed to find specific image features in FOI that might be important for accurately diagnosing different rheumatic diseases.

PATIENTS AND METHODS

FOI images of the hands of patients with different types of rheumatic diseases, such as rheumatoid arthritis (RA), osteoarthritis (OA), and connective tissue diseases (CTD), were assessed in a reading of 20 different image features in three phases of the contrast agent dynamics, yielding 60 different features for each patient. The readings were analyzed for mutual differential diagnosis of the three diseases (One-vs-One) and each disease in all data (One-vs-Rest). In the first step, statistical tools and machine-learning-based methods were applied to reveal the importance rankings of the features, that is, to find features that contribute most to the model-based classification. In the second step machine learning with a stepwise increasing number of features was applied, sequentially adding at each step the most crucial remaining feature to extract a minimized subset that yields the highest diagnostic accuracy.

RESULTS

In total, = 605 FOI of both hands were analyzed ( = 235 with RA, = 229 with OA, and = 141 with CTD). All classification problems showed maximum accuracy with a reduced set of image features. For RA-vs.-OA, five features were needed for high accuracy. For RA-vs.-CTD ten, OA-vs.-CTD sixteen, RA-vs.-Rest five, OA-vs.-Rest eleven, and CTD-vs-Rest fifteen, features were needed, respectively. For all problems, the final importance ranking of the features with respect to the contrast agent dynamics was determined.

CONCLUSIONS

With the presented investigations, the set of features in FOI examinations relevant to the differential diagnosis of the selected rheumatic diseases could be remarkably reduced, providing helpful information for the physician.

摘要

背景与目的

准确快速地诊断影响手部的风湿性疾病对于进一步的治疗决策至关重要。荧光光学成像(FOI)通过增加信号强度使炎症引起的微循环受损可视化,从而产生不同的图像特征。本分析旨在寻找FOI中可能对准确诊断不同风湿性疾病至关重要的特定图像特征。

患者与方法

对患有不同类型风湿性疾病的患者手部进行FOI成像,如类风湿关节炎(RA)、骨关节炎(OA)和结缔组织病(CTD),在造影剂动力学的三个阶段对20种不同的图像特征进行解读,每位患者产生60种不同特征。对这些解读进行分析,以对三种疾病进行相互鉴别诊断(一对一)以及在所有数据中对每种疾病进行诊断(一对其余)。第一步,应用统计工具和基于机器学习的方法来揭示特征的重要性排名,即找到对基于模型的分类贡献最大的特征。第二步,应用特征数量逐步增加的机器学习方法,在每一步依次添加最关键的剩余特征,以提取产生最高诊断准确性的最小化子集。

结果

总共分析了605例双手的FOI图像(RA患者235例,OA患者229例,CTD患者141例)。所有分类问题在减少的图像特征集下均显示出最高准确性。对于RA与OA的鉴别,高精度需要5个特征。对于RA与CTD的鉴别需要10个特征,OA与CTD的鉴别需要16个特征,RA与其余疾病的鉴别需要5个特征,OA与其余疾病的鉴别需要11个特征,CTD与其余疾病的鉴别需要15个特征。对于所有问题,确定了与造影剂动力学相关的特征的最终重要性排名。

结论

通过本研究,可显著减少FOI检查中与所选风湿性疾病鉴别诊断相关的特征集,为医生提供有用信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/87b0/10475553/84aef3d9e001/fmed-10-1228833-g0001.jpg

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