Interpretable Skin Cancer Classification based on Incremental Domain Knowledge Learning.

IF 5.9 Q1 Computer Science
Journal of Healthcare Informatics Research Pub Date : 2023-02-15 eCollection Date: 2023-03-01 DOI:10.1007/s41666-023-00127-4
Eman Rezk, Mohamed Eltorki, Wael El-Dakhakhni
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引用次数: 0

Abstract

The recent advances in artificial intelligence have led to the rapid development of computer-aided skin cancer diagnosis applications that perform on par with dermatologists. However, the black-box nature of such applications makes it difficult for physicians to trust the predicted decisions, subsequently preventing the proliferation of such applications in the clinical workflow. In this work, we aim to address this challenge by developing an interpretable skin cancer diagnosis approach using clinical images. Accordingly, a skin cancer diagnosis model consolidated with two interpretability methods is developed. The first interpretability method integrates skin cancer diagnosis domain knowledge, characterized by a skin lesion taxonomy, into model development, whereas the other method focuses on visualizing the decision-making process by highlighting the dominant of interest regions of skin lesion images. The proposed model is trained and validated on clinical images since the latter are easily obtainable by non-specialist healthcare providers. The results demonstrate the effectiveness of incorporating lesion taxonomy in improving model classification accuracy, where our model can predict the skin lesion origin as melanocytic or non-melanocytic with an accuracy of 87%, predict lesion malignancy with 77% accuracy, and provide disease diagnosis with an accuracy of 71%. In addition, the implemented interpretability methods assist understand the model's decision-making process and detecting misdiagnoses. This work is a step toward achieving interpretability in skin cancer diagnosis using clinical images. The developed approach can assist general practitioners to make an early diagnosis, thus reducing the redundant referrals that expert dermatologists receive for further investigations.

基于增量领域知识学习的可解释皮肤癌分类。
人工智能领域的最新进展促使计算机辅助皮肤癌诊断应用程序迅速发展,其性能可与皮肤科医生媲美。然而,由于此类应用的黑箱性质,医生很难相信其预测结果,从而阻碍了此类应用在临床工作流程中的推广。在这项工作中,我们旨在利用临床图像开发一种可解释的皮肤癌诊断方法,以应对这一挑战。因此,我们开发了一种皮肤癌诊断模型,并将两种可解释性方法结合在一起。第一种可解释性方法将皮肤癌诊断领域的知识(以皮肤病变分类为特征)整合到模型开发中,而另一种方法则侧重于通过突出皮肤病变图像中的主要感兴趣区来实现决策过程的可视化。由于非专业医疗服务提供者很容易获得临床图像,因此建议的模型在临床图像上进行了训练和验证。结果表明,结合皮损分类法能有效提高模型分类的准确性,我们的模型能以 87% 的准确率预测皮损来源是黑色素细胞还是非黑色素细胞,以 77% 的准确率预测皮损的恶性程度,并以 71% 的准确率提供疾病诊断。此外,实施的可解释性方法有助于理解模型的决策过程和检测误诊。这项工作朝着利用临床图像实现皮肤癌诊断的可解释性迈出了一步。所开发的方法可以帮助普通医生做出早期诊断,从而减少皮肤科专家为进一步检查而进行的多余转诊。
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
Journal of Healthcare Informatics Research
Journal of Healthcare Informatics Research Computer Science-Computer Science Applications
CiteScore
13.60
自引率
1.70%
发文量
12
期刊介绍: Journal of Healthcare Informatics Research serves as a publication venue for the innovative technical contributions highlighting analytics, systems, and human factors research in healthcare informatics.Journal of Healthcare Informatics Research is concerned with the application of computer science principles, information science principles, information technology, and communication technology to address problems in healthcare, and everyday wellness. Journal of Healthcare Informatics Research highlights the most cutting-edge technical contributions in computing-oriented healthcare informatics.  The journal covers three major tracks: (1) analytics—focuses on data analytics, knowledge discovery, predictive modeling; (2) systems—focuses on building healthcare informatics systems (e.g., architecture, framework, design, engineering, and application); (3) human factors—focuses on understanding users or context, interface design, health behavior, and user studies of healthcare informatics applications.   Topics include but are not limited to: ·         healthcare software architecture, framework, design, and engineering;·         electronic health records·         medical data mining·         predictive modeling·         medical information retrieval·         medical natural language processing·         healthcare information systems·         smart health and connected health·         social media analytics·         mobile healthcare·         medical signal processing·         human factors in healthcare·         usability studies in healthcare·         user-interface design for medical devices and healthcare software·         health service delivery·         health games·         security and privacy in healthcare·         medical recommender system·         healthcare workflow management·         disease profiling and personalized treatment·         visualization of medical data·         intelligent medical devices and sensors·         RFID solutions for healthcare·         healthcare decision analytics and support systems·         epidemiological surveillance systems and intervention modeling·         consumer and clinician health information needs, seeking, sharing, and use·         semantic Web, linked data, and ontology·         collaboration technologies for healthcare·         assistive and adaptive ubiquitous computing technologies·         statistics and quality of medical data·         healthcare delivery in developing countries·         health systems modeling and simulation·         computer-aided diagnosis
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