利用人工智能检测皮肤真菌感染的决策支持系统

IF 2.9 4区 医学 Q2 PATHOLOGY
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引用次数: 0

摘要

皮肤真菌感染是最常见的皮肤病之一,因此,用周期性酸-希夫(PAS)和戈莫里偏氨基银(GMS)染色法进行显微镜检查来确定真菌成分非常耗时。尽管形态上的一些变异性给基于人工智能(AI)的解决方案的训练带来了挑战,但这些结构是受青睐的潜在目标,使基于人工智能的技术大有可为。在此,我们提出了一种用于识别皮肤真菌感染的新型人工智能解决方案,有可能为病理学家提供决策支持系统。我们使用了 2014 年至 2023 年期间以色列谢巴医疗中心确诊为皮肤真菌感染患者的皮肤活检样本。样本用 PAS 和 GMS 染色,并通过飞利浦 IntelliSite 扫描仪进行数字化处理。DeePathology® STUDIO 真菌元素经过两位专业病理学家的全面修改后,被注释并视为基本真实数据。随后,这些数据被用于创建基于人工智能的解决方案,并在其他相关区域得到进一步验证。研究参与者分为两组。在第一个队列中,算法的总体灵敏度为 0.8,特异性为 0.97,F1 得分为 0.78;在第二个队列中,算法的总体灵敏度为 0.93,特异性为 0.99,F1 得分为 0.95。作为基于人工智能的真菌检测算法的概念验证,所取得的结果令人鼓舞。DeePathology® STUDIO 可作为病理学家使用 PAS 和 GMS 染色诊断皮肤真菌感染时的决策支持系统,从而节省时间和金钱。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A decision support system for the detection of cutaneous fungal infections using artificial intelligence

Cutaneous fungal infections are one of the most common skin conditions, hence, the burden of determining fungal elements upon microscopic examination with periodic acid-Schiff (PAS) and Gomori methenamine silver (GMS) stains, is very time consuming. Despite some morphological variability posing challenges to training artificial intelligence (AI)-based solutions, these structures are favored potential targets, enabling the recruitment of promising AI-based technologies. Herein, we present a novel AI solution for identifying skin fungal infections, potentially providing a decision support system for pathologists. Skin biopsies of patients diagnosed with a cutaneous fungal infection at the Sheba Medical Center, Israel between 2014 and 2023, were used. Samples were stained with PAS and GMS and digitized by the Philips IntelliSite scanner. DeePathology® STUDIO fungal elements were annotated and deemed as ground truth data after an overall revision by two specialist pathologists. Subsequently, they were used to create an AI-based solution, which has been further validated in other regions of interests. The study participants were divided into two cohorts. In the first cohort, the overall sensitivity of the algorithm was 0.8, specificity 0.97, F1 score 0.78; in the second, the overall sensitivity of the algorithm was 0.93, specificity 0.99, F1 score 0.95. The results obtained are encouraging as proof of concept for an AI-based fungi detection algorithm. DeePathology® STUDIO can be employed as a decision support system for pathologists when diagnosing a cutaneous fungal infection using PAS and GMS stains, thereby, saving time and money.

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来源期刊
CiteScore
5.00
自引率
3.60%
发文量
405
审稿时长
24 days
期刊介绍: Pathology, Research and Practice provides accessible coverage of the most recent developments across the entire field of pathology: Reviews focus on recent progress in pathology, while Comments look at interesting current problems and at hypotheses for future developments in pathology. Original Papers present novel findings on all aspects of general, anatomic and molecular pathology. Rapid Communications inform readers on preliminary findings that may be relevant for further studies and need to be communicated quickly. Teaching Cases look at new aspects or special diagnostic problems of diseases and at case reports relevant for the pathologist''s practice.
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