Artificial intelligence in dermatopathology: Updates, strengths, and challenges

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
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Abstract

Artificial intelligence (AI) has evolved to become a significant force in various domains, including medicine. We explore the role of AI in pathology, with a specific focus on dermatopathology and neoplastic dermatopathology. AI, encompassing machine learning and deep learning, has demonstrated its potential in tasks ranging from diagnostic applications on whole slide imaging to predictive and prognostic functions in skin pathology. In dermatopathology, studies have assessed AI's ability to identify skin lesions, classify melanomas, and improve diagnostic accuracy. Results indicate that AI, particularly convolutional neural networks, can outperform human pathologists in terms of sensitivity and specificity. AI aids in predicting disease outcomes, identifying aggressive tumors, and differentiating between various skin conditions. Neoplastic dermatopathology showcases AI's prowess in classifying melanocytic lesions, discriminating between melanomas and nevi, and aids dermatopathologists in making accurate diagnoses. Studies emphasize the reproducibility and diagnostic aid that AI provides, especially in challenging cases. In inflammatory and lymphoproliferative dermatopathology, limited research exists, but studies show attempts to use AI to differentiate conditions such as mycosis fungoides and eczema. Although some results are promising, further exploration is needed in these areas. We highlight the extraordinary interest AI has garnered in the scientific community and its potential to assist clinicians and pathologists. Despite the advancements, we have stressed the importance of collaboration between medical professionals, computer scientists, bioinformaticians, and engineers to harness AI's benefits and acknowledging its limitations and risks. The integration of AI into dermatopathology holds great promise, positioning it as a valuable tool rather than as a replacement for human expertise.
皮肤病理学中的人工智能:更新、优势与挑战。
人工智能(AI)已发展成为包括医学在内的各个领域的重要力量。我们探讨了人工智能在病理学中的作用,特别关注皮肤病理学和肿瘤性皮肤病理学。包括机器学习(ML)和深度学习(DL)在内的人工智能已在从全切片成像(WSI)的诊断应用到皮肤病理学的预测和预后功能等各种任务中展示了其潜力。在皮肤病理学方面,研究评估了人工智能识别皮肤病变、对黑色素瘤进行分类以及提高诊断准确性的能力。结果表明,人工智能,特别是卷积神经网络(CNN),在灵敏度和特异性方面都优于人类病理学家。此外,人工智能还有助于预测疾病结果、识别侵袭性肿瘤以及区分各种皮肤病。肿瘤性皮肤病理学展示了人工智能在对黑色素细胞病变进行分类、区分黑色素瘤和痣以及帮助皮肤病理学家做出准确诊断方面的能力。研究强调了人工智能提供的可重复性和诊断帮助,尤其是在具有挑战性的病例中。在炎症和淋巴增生性皮肤病理学方面,现有的研究还很有限,但有研究表明,人们尝试使用人工智能来区分真菌病和湿疹等病症。虽然有些结果很有希望,但在这些领域还需要进一步探索。我们强调了人工智能在科学界引起的极大兴趣及其帮助临床医生和病理学家的潜力。尽管取得了进步,但我们仍强调医学专家、计算机科学家、生物信息学家和工程师之间合作的重要性,以便在利用人工智能的优势的同时认识到其局限性和风险。将人工智能融入皮肤病理学大有可为,它将成为一种有价值的工具,而不是人类专业知识的替代品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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