Division of Family Medicine and Primary Care, Department of Neurobiology, Care Sciences and Society, Karolinska Institutet, Stockholm, Sweden.
Atrium Healthcare Centre, Region Stockholm, Sweden.
Br J Dermatol. 2024 Jun 20;191(1):125-133. doi: 10.1093/bjd/ljae021.
BACKGROUND: Use of artificial intelligence (AI), or machine learning, to assess dermoscopic images of skin lesions to detect melanoma has, in several retrospective studies, shown high levels of diagnostic accuracy on par with - or even outperforming - experienced dermatologists. However, the enthusiasm around these algorithms has not yet been matched by prospective clinical trials performed in authentic clinical settings. In several European countries, including Sweden, the initial clinical assessment of suspected skin cancer is principally conducted in the primary healthcare setting by primary care physicians, with or without access to teledermoscopic support from dermatology clinics. OBJECTIVES: To determine the diagnostic performance of an AI-based clinical decision support tool for cutaneous melanoma detection, operated by a smartphone application (app), when used prospectively by primary care physicians to assess skin lesions of concern due to some degree of melanoma suspicion. METHODS: This prospective multicentre clinical trial was conducted at 36 primary care centres in Sweden. Physicians used the smartphone app on skin lesions of concern by photographing them dermoscopically, which resulted in a dichotomous decision support text regarding evidence for melanoma. Regardless of the app outcome, all lesions underwent standard diagnostic procedures (surgical excision or referral to a dermatologist). After investigations were complete, lesion diagnoses were collected from the patients' medical records and compared with the app's outcome and other lesion data. RESULTS: In total, 253 lesions of concern in 228 patients were included, of which 21 proved to be melanomas, with 11 thin invasive melanomas and 10 melanomas in situ. The app's accuracy in identifying melanomas was reflected in an area under the receiver operating characteristic (AUROC) curve of 0.960 [95% confidence interval (CI) 0.928-0.980], corresponding to a maximum sensitivity and specificity of 95.2% and 84.5%, respectively. For invasive melanomas alone, the AUROC was 0.988 (95% CI 0.965-0.997), corresponding to a maximum sensitivity and specificity of 100% and 92.6%, respectively. CONCLUSIONS: The clinical decision support tool evaluated in this investigation showed high diagnostic accuracy when used prospectively in primary care patients, which could add significant clinical value for primary care physicians assessing skin lesions for melanoma.
背景:利用人工智能(AI)或机器学习来评估皮肤病变的皮肤镜图像以检测黑色素瘤,在几项回顾性研究中,其诊断准确性与经验丰富的皮肤科医生相当,甚至更高。然而,这些算法的热情尚未得到在真实临床环境中进行的前瞻性临床试验的匹配。在包括瑞典在内的几个欧洲国家,最初对疑似皮肤癌的临床评估主要由初级保健医生在初级保健环境中进行,无论是否可以获得皮肤科诊所的远程皮肤镜支持。
目的:确定一种基于人工智能的临床决策支持工具在皮肤科医生用于评估因某种程度的黑色素瘤怀疑而引起的关注皮肤病变时的诊断性能,该工具通过智能手机应用程序(app)操作。
方法:这项前瞻性多中心临床试验在瑞典的 36 个初级保健中心进行。医生通过对关注的皮肤病变进行皮肤镜拍照来使用智能手机应用程序,这导致关于黑色素瘤证据的二分类决策支持文本。无论应用程序的结果如何,所有病变都经过标准诊断程序(手术切除或转介给皮肤科医生)。在调查完成后,从患者的病历中收集病变诊断,并与应用程序的结果和其他病变数据进行比较。
结果:共纳入 228 名患者的 253 个关注病变,其中 21 个证实为黑色素瘤,包括 11 个薄型侵袭性黑色素瘤和 10 个原位黑色素瘤。应用程序识别黑色素瘤的准确性反映在接收者操作特征(ROC)曲线下的面积(AUROC)为 0.960[95%置信区间(CI)0.928-0.980],对应最大敏感性和特异性分别为 95.2%和 84.5%。对于侵袭性黑色素瘤单独,AUROC 为 0.988(95%CI 0.965-0.997),对应最大敏感性和特异性分别为 100%和 92.6%。
结论:在本研究中评估的临床决策支持工具在初级保健患者中前瞻性使用时显示出较高的诊断准确性,这可能为评估黑色素瘤皮肤病变的初级保健医生提供重要的临床价值。
Cochrane Database Syst Rev. 2025-6-4
Cochrane Database Syst Rev. 2025-6-9
J Med Internet Res. 2025-8-15
J Eur Acad Dermatol Venereol. 2024-12-2