使用AI改善临床管理的H&E淋巴瘤分型。

IF 2.5 4区 医学 Q2 PATHOLOGY
Anna Maria Tsakiroglou, Chris M Bacon, Daniel Shingleton, Gabrielle Slavin, Prokopios Vogiatzis, Richard Byers, Christopher Carey, Martin Fergie
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引用次数: 0

摘要

目的:在淋巴瘤的常规诊断中,当对样本进行活检以确定是否需要转诊到专门的血液病理学服务时,会进行初步的非专家分诊。这给病理学服务带来了沉重的负担,导致延误,并经常导致良性病例的过度转诊。我们的目标是开发一个使用人工智能(AI)的自动分诊系统,以实现更准确、快速的病例转诊,从而解决这些问题。方法:从纽卡斯尔大学医院(302例)和曼彻斯特皇家医院(339例)采集淋巴结H&E染色全玻片图像(WSI)的回顾性数据集,其中3种最常见的淋巴瘤亚型的代表性大致相同:滤泡性淋巴瘤、弥漫性大B细胞淋巴瘤和经典霍奇金淋巴瘤,以及反应性对照。数据的一个子集(80%)用于训练,另一个验证子集(10%)用于模型选择,最后一个非重叠测试子集(10%)用作临床评估。结果:AI分诊的多级别准确度为0.828±0.041 总体精度为0.932±0.024 当区分反应性病例和恶性病例时。它检测淋巴瘤的能力相当于两名血液病理学家(0.925,0.950),高于重复相同任务的非专业病理学家(0.75)。为了帮助解释,人工智能工具还提供了不确定性估计和注意力热图。结论:使用人工智能的自动分诊在有助于准确及时诊断淋巴瘤方面有很大的前景,最终有利于患者的护理和结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Lymphoma triage from H&E using AI for improved clinical management.

Aims: In routine diagnosis of lymphoma, initial non-specialist triage is carried out when the sample is biopsied to determine if referral to specialised haematopathology services is needed. This places a heavy burden on pathology services, causes delays and often results in over-referral of benign cases. We aimed to develop an automated triage system using artificial intelligence (AI) to enable more accurate and rapid referral of cases, thereby addressing these issues.

Methods: A retrospective dataset of H&E-stained whole slide images (WSI) of lymph nodes was taken from Newcastle University Hospital (302 cases) and Manchester Royal Infirmary Hospital (339 cases) with approximately equal representation of the 3 most prevalent lymphoma subtypes: follicular lymphoma, diffuse large B-cell and classic Hodgkin's lymphoma, as well as reactive controls. A subset (80%) of the data was used for training, a further validation subset (10%) for model selection and a final non-overlapping test subset (10%) for clinical evaluation.

Results: AI triage achieved multiclass accuracy of 0.828±0.041 and overall accuracy of 0.932±0.024 when discriminating between reactive and malignant cases. Its ability to detect lymphoma was equivalent to that of two haematopathologists (0.925, 0.950) and higher than a non-specialist pathologist (0.75) repeating the same task. To aid explainability, the AI tool also provides uncertainty estimation and attention heatmaps.

Conclusions: Automated triage using AI holds great promise in contributing to the accurate and timely diagnosis of lymphoma, ultimately benefiting patient care and outcomes.

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来源期刊
CiteScore
7.80
自引率
2.90%
发文量
113
审稿时长
3-8 weeks
期刊介绍: Journal of Clinical Pathology is a leading international journal covering all aspects of pathology. Diagnostic and research areas covered include histopathology, virology, haematology, microbiology, cytopathology, chemical pathology, molecular pathology, forensic pathology, dermatopathology, neuropathology and immunopathology. Each issue contains Reviews, Original articles, Short reports, Correspondence and more.
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