Insights into the Impact of Artificial Intelligence on Psoriasis Treatment Strategies: A Mini Review.

IF 2 Q3 DERMATOLOGY
A Prithiviraj, M A Aarthi, N Venkateswaramurthy
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引用次数: 0

Abstract

Abstract: Psoriasis is a chronic inflammatory skin condition affecting millions of people globally, with prevalence varying significantly between countries. Conventional treatments, including topical agents, phototherapy, and systemic medications, often fail to account for individual variability, leading to suboptimal outcomes and potential adverse effects. Artificial intelligence (AI) has emerged as a promising approach to enhance precision and personalization in psoriasis management, potentially transforming diagnostic accuracy and treatment selection. This review examines the integration of AI across multiple domains of psoriasis treatment: (1) machine learning algorithms for phototherapy outcome prediction, (2) deep learning techniques for lesion segmentation and severity assessment, (3) AI-enhanced remote photographic monitoring systems, and (4) predictive modeling for response to systemic therapies and biologics. The analysis encompasses various AI methodologies, including random forest classifiers, convolutional neural networks, multiscale superpixel clustering, and gradient-boosted decision trees applied to clinical datasets, imaging analysis, and multi-omic patient data. AI-driven models demonstrate significant clinical utility with phototherapy outcome prediction, achieving high sensitivity (>84%) and accuracy (75-85%). Automated lesion segmentation reaches 86.99%-pixel accuracy, while remote AI assessments strongly correlate with clinical evaluations (Intraclass Correlation Coefficient [ICC] = 0.78-0.99). Notably, predictive models can forecast biologic therapy responses with > 95% accuracy within 2-4 weeks of treatment initiation, substantially reducing evaluation timelines from the conventional 12-week assessment period. AI technologies offer transformative potential in psoriasis management by enabling precise diagnosis, outcome prediction, and personalized therapy selection. Current implementations show promising results across diverse clinical applications, from phototherapy optimization to biologic response prediction. While challenges in dataset diversity, standardization, and validation remain, these represent opportunities for further advancement toward precision medicine in dermatology.

人工智能对银屑病治疗策略的影响:一个小综述。
摘要:银屑病是一种影响全球数百万人的慢性炎症性皮肤病,其患病率在各国之间存在显著差异。传统的治疗方法,包括局部用药、光疗和全身用药,往往不能解释个体差异,导致次优结果和潜在的不良反应。人工智能(AI)已经成为一种有前途的方法,可以提高牛皮癣管理的准确性和个性化,有可能改变诊断准确性和治疗选择。本文综述了人工智能在银屑病治疗多个领域的整合:(1)用于光疗结果预测的机器学习算法,(2)用于病变分割和严重程度评估的深度学习技术,(3)人工智能增强的远程摄影监测系统,以及(4)对全身治疗和生物制剂反应的预测建模。该分析涵盖了各种人工智能方法,包括随机森林分类器、卷积神经网络、多尺度超像素聚类以及应用于临床数据集、成像分析和多组患者数据的梯度增强决策树。人工智能驱动的模型在光疗结果预测方面具有重要的临床应用价值,实现了高灵敏度(bb0 84%)和准确性(75-85%)。自动病灶分割准确率达到86.99%,而远程人工智能评估与临床评估有很强的相关性(类内相关系数[ICC] = 0.78-0.99)。值得注意的是,预测模型可以在治疗开始的2-4周内预测生物治疗反应,准确率为95%,大大缩短了传统12周评估期的评估时间。人工智能技术通过实现精确诊断、结果预测和个性化治疗选择,为银屑病管理提供了变革性的潜力。从光疗优化到生物反应预测,目前的实现在不同的临床应用中显示出有希望的结果。虽然数据集多样性、标准化和验证方面的挑战仍然存在,但这些都代表了皮肤科进一步向精准医学发展的机会。
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
CiteScore
2.00
自引率
11.80%
发文量
201
审稿时长
49 weeks
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