de Andrade Hilson Gomes Vilar, da Silva Rocha Elisson, de Carvalho Monteiro Kayo H, de Morais Cleber Matos, Moura Dos Santos Danielle Christine, Cassimiro Nascimento Dimas, Dourado Raphael A, Lynn Theo, Endo Patricia Takako
Programa de Pós-Graduação em Engenharia da Computação (PPGEC), Universidade de Pernambuco (UPE), Recife, Brazil.
Instituto Federal de Educação, Ciência e Tecnologia de Pernambuco (IFPE), Recife, Brazil.
PLoS Comput Biol. 2025 Jun 26;21(6):e1012550. doi: 10.1371/journal.pcbi.1012550. eCollection 2025 Jun.
Leprosy, or Hansen's disease, is a Neglected Tropical Disease (NTD) caused by Mycobacterium leprae that mainly affects the skin and peripheral nerves, causing neuropathy to varying degrees. It can result in physical disabilities and functional loss and is particularly prevalent amongst the most vulnerable populations in tropical and subtropical regions worldwide. The persistent stigma and social exclusion associated with leprosy complicate eradication efforts exacerbate the wider challenges faced by NTDs in sourcing the necessary resources and attention for control and elimination. The introduction of Multidrug Therapy (MDT) significantly lowers the global disease burden. Despite this breakthrough in the treatment of leprosy, over 200,000 new leprosy cases are reported annually across more than 120 countries, emphasizing the need for ongoing detection and management efforts. Artificial Intelligence (AI) has the potential to transform leprosy care by accelerating early detection, improving accurate diagnosis, and enabling predictive modeling to improve the quality for those affected. The potential of AI to provide information to assist healthcare professionals in interventions that reduce the risk of disability, and consequently stigma, particularly in endemic regions, presents a promising path to reducing the incidence of leprosy and improving integration social status of patients. This systematic literature review (SLR) examines the state of the art in research on the use of AI for leprosy care. From an initial 657 works from six scientific databases (ACM Digital Library, IEEE Xplore, PubMed, Scopus, Science Direct and Springer), only 30 relevant works were identified, after analysis of three independent reviewers. We have excluded works due duplication, couldn't be retrieved and quality assessment. Results show that current research is focused primarily on the identification of symptoms using image based classification using three main techniques, neural networks, convolutional neural networks, and support vector machines; a small number of studies focus on other thematic areas of leprosy care. A comprehensive systematic approach to research on the application of AI to leprosy care can make a meaningful contribution to a leprosy-free world and help deliver on the promise of the Sustainable Development Goals (SDG).
麻风病,即汉森氏病,是一种由麻风分枝杆菌引起的被忽视的热带病(NTD),主要影响皮肤和周围神经,导致不同程度的神经病变。它可导致身体残疾和功能丧失,在全球热带和亚热带地区的最脆弱人群中尤为普遍。与麻风病相关的持续污名化和社会排斥使根除工作复杂化,加剧了被忽视的热带病在获取控制和消除所需资源及关注方面面临的更广泛挑战。多药疗法(MDT)的引入显著降低了全球疾病负担。尽管在麻风病治疗方面取得了这一突破,但每年仍有超过120个国家报告20多万例新的麻风病病例,这凸显了持续开展检测和管理工作的必要性。人工智能(AI)有潜力通过加速早期检测、提高准确诊断以及进行预测建模来改善对患者的护理质量,从而改变麻风病的治疗方式。人工智能有潜力提供信息,协助医疗保健专业人员开展干预措施,降低残疾风险,进而减少污名化,特别是在流行地区,这为降低麻风病发病率和改善患者的社会融入状况提供了一条充满希望的途径。本系统文献综述(SLR)考察了利用人工智能进行麻风病护理的研究现状。在对来自六个科学数据库(ACM数字图书馆、IEEE Xplore、PubMed、Scopus、科学Direct和Springer)的657篇初始文献进行分析后,经三位独立评审员筛选,仅确定了30篇相关文献。我们排除了因重复、无法检索和质量评估不合格的文献。结果表明,当前的研究主要集中在使用基于图像分类的三种主要技术(神经网络、卷积神经网络和支持向量机)来识别症状;少数研究关注麻风病护理的其他主题领域。对人工智能在麻风病护理中的应用进行全面系统的研究方法,可为实现无麻风病世界做出有意义的贡献,并有助于实现可持续发展目标(SDG)的承诺。