皮肤病理学中的人工智能:系统综述。

IF 3.7 4区 医学 Q1 DERMATOLOGY
Roshni Mahesh Lalmalani, Clarissa Lim Xin Yu, Choon Chiat Oh
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引用次数: 0

摘要

背景:在人工智能(AI)等先进技术的推动下,医学研究正在改变医疗保健。皮肤病学以其可视化特性而闻名,人工智能将使其受益匪浅,尤其是在使用数字化切片的皮肤病理学领域。本综述探讨了人工智能在提高皮肤病理诊断和护理方面的作用、挑战、机遇和未来潜力:根据 PRISMA 和 Cochrane 手册标准,本系统综述探讨了人工智能在皮肤病理学中的作用。它采用了一种跨学科的方法,包括不同的研究类型和全面的数据库搜索。纳入标准包括 2000 年至 2023 年的同行评审文章,重点关注人工智能在皮肤病理学中的实际应用:许多研究都对人工智能在皮肤病理学中的应用潜力进行了调查。我们审查了 112 篇论文。值得注意的应用包括人工智能对痣和黑色素瘤的组织病理学图像进行分类,尽管在亚型区分和普适性方面存在挑战。人工智能从福尔马林固定石蜡包埋样本中识别黑色素瘤的准确率很高,但由于数据集较小而受到限制。深度学习算法显示了对特定皮肤病的诊断准确性,但仍存在一些挑战,如样本量小和需要前瞻性验证:本系统综述强调了人工智能在提高皮肤病理学诊断和患者护理方面的潜力。应对数据集有限和潜在偏见等挑战至关重要。未来的方向包括扩大数据集、开展验证研究、促进跨学科合作,以及创建以患者为中心的人工智能工具,以提高皮肤病理学的准确性、可及性和以患者为中心的护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence in Dermatopathology: a systematic review.

Background: Medical research, driven by advancing technologies like Artificial Intelligence (AI), is transforming healthcare. Dermatology, known for its visual nature, benefits from AI, especially in dermatopathology with digitized slides. This review explores into AI's role, challenges, opportunities, and future potential in enhancing dermatopathological diagnosis and care.

Materials and methodology: Adhering to PRISMA and Cochrane Handbook standards, this systematic review explored AI's function in dermatopathology. It employed an interdisciplinary method, encompassing diverse study types and comprehensive database searches. Inclusion criteria encompassed peer-reviewed articles from 2000 to 2023, with a focus on practical AI use in dermatopathology.

Results: Numerous studies have investigated AI's potential in dermatopathology. We reviewed 112 papers. Notable applications include AI classifying histopathological images of nevi and melanomas, although challenges exist regarding subtype differentiation and generalizability. AI achieved high accuracy in melanoma recognition from formalin-fixed paraffin-embedded samples but faced limitations due to small datasets. Deep learning algorithms showed diagnostic accuracy for specific skin conditions, but challenges persisted, such as small sample sizes and the need for prospective validation.

Conclusion: This systematic review underscores AI's potential in enhancing dermatopathology for better diagnosis and patient care. Addressing challenges like limited datasets and potential biases is essential. Future directions involve expanding datasets, conducting validation studies, promoting interdisciplinary collaboration, and creating patient-centred AI tools to enhance dermatopathology's accuracy, accessibility, and patient-focused care.

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来源期刊
CiteScore
3.20
自引率
2.40%
发文量
389
审稿时长
3-8 weeks
期刊介绍: Clinical and Experimental Dermatology (CED) is a unique provider of relevant and educational material for practising clinicians and dermatological researchers. We support continuing professional development (CPD) of dermatology specialists to advance the understanding, management and treatment of skin disease in order to improve patient outcomes.
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