Coates Sarah J, Yang Feng, Hill Cody, Xue Zhiyun, Rajaraman Sivaramakrishnan, Semeere Aggrey, Ayanga Racheal, Laker-Oketta Miriam, Byakwaga Helen, Lukande Robert, Semakadde Matthew, Kanyesigye Micheal, Wenger Megan, LeBoit Philip, McCalmont Timothy, Cesarman Ethel, Erickson David, Maurer Toby, Antani Sameer, Martin Jeffrey
medRxiv. 2025 Apr 22:2025.04.21.25326060. doi: 10.1101/2025.04.21.25326060.
Advanced-stage disease at the time of diagnosis, with resultant high mortality, is among the most urgent issues for HIV-related Kaposi sarcoma (KS) in sub-Saharan Africa. Lack of access to skilled clinical personnel and histopathologic technology in the region contribute to diagnostic delays and advanced stage at diagnosis. Accordingly, new paradigms for KS diagnosis are needed.
To evaluate the accuracy of artificial intelligence (AI)-based interpretation of digital surface images of skin lesions to diagnose KS among dark-skinned patients in Uganda.
Cross-sectional study of consecutive participants referred to skin biopsy services in Uganda because of clinical suspicion of KS. Lesions were photographed using a digital camera, and punch biopsies were obtained. Histopathologic interpretation was considered the gold standard. Using training (∼70% of images) and validation (∼10% of images) sets, we developed a prediction model using a rule-based combination of YOLO (You Only Look Once) version 5 and 8 object detection classifiers.
Free-of-charge skin biopsy services.
Consecutive sample of 482 individuals were evaluated due to clinical suspicion of KS.
Sensitivity, specificity, positive and negative predictive value (with accompanying 95% confidence intervals) of the AI-based prediction model in a test set (∼20% of images). The accuracy of a dermatologist's visual interpretation of images was also described.
472 participants (1385 images) were evaluable. Of these, 36% were female, median age was 34 years, and 94% had HIV; 332 had KS, and 140 had no KS by histopathology. In the test set, the AI-derived prediction model achieved 89% sensitivity (85%-94%) and 51% specificity (40%-61%) for diagnosing KS; positive predictive value was 81% (75%-86%) and negative predictive value was 67% (55%-78%). A dermatologist evaluating the same images, with emphasis on sensitivity, achieved sensitivity of 93% (89%-96%) and specificity of 19% (11%-28%).
Among dark-skinned patients in Uganda with skin lesions suspicious for KS, evaluation of digital surface images by an AI-based prediction model produced moderate accuracy for diagnosing KS. While currently inadequate for clinical use, this inaugural assessment is sufficiently promising to justify evaluation of larger datasets and evolving technologies to determine if accuracy can be improved.
Can an artificial intelligence (AI)-based prediction model be developed from digital images to accurately distinguish Kaposi sarcoma (KS) from non-KS in dark-skinned patients? Evaluation of digital images of skin lesions from patients in Uganda by an AI-based prediction model produced moderate accuracy for diagnosing KS. In sub-Saharan Africa, where incidence and mortality from KS is high and delayed diagnosis is common due to limited specialized personnel and technical supplies, AI-based prediction models built on digital images taken of suspicious lesions may someday hasten KS diagnoses.
诊断时处于晚期疾病状态并导致高死亡率,是撒哈拉以南非洲地区与艾滋病毒相关的卡波西肉瘤(KS)最紧迫的问题之一。该地区缺乏熟练的临床人员和组织病理学技术,导致诊断延迟和诊断时处于晚期阶段。因此,需要新的KS诊断模式。
评估基于人工智能(AI)对皮肤病变数字表面图像的解读在乌干达深色皮肤患者中诊断KS的准确性。
对因临床怀疑KS而转诊至乌干达皮肤活检服务机构的连续参与者进行横断面研究。使用数码相机拍摄病变,并进行钻孔活检。组织病理学解读被视为金标准。使用训练集(约70%的图像)和验证集(约10%的图像),我们使用基于规则的YOLO(You Only Look Once)版本5和8目标检测分类器组合开发了一个预测模型。
免费皮肤活检服务。
由于临床怀疑KS,对482名个体的连续样本进行了评估。
基于AI的预测模型在测试集(约20%的图像)中的敏感性、特异性、阳性和阴性预测值(以及伴随的95%置信区间)。还描述了皮肤科医生对图像的视觉解读的准确性。
472名参与者(1385张图像)可进行评估。其中,36%为女性,中位年龄为34岁,94%感染了艾滋病毒;332人患有KS,140人经组织病理学检查未患KS。在测试集中,基于AI的预测模型诊断KS的敏感性为89%(85%-94%),特异性为51%(40%-61%);阳性预测值为81%(75%-86%),阴性预测值为67%(55%-78%)。一名皮肤科医生评估相同图像,重点关注敏感性,敏感性为93%(89%-96%),特异性为19%(11%-28%)。
在乌干达有可疑KS皮肤病变的深色皮肤患者中,基于AI的预测模型对数字表面图像的评估在诊断KS方面具有中等准确性。虽然目前不足以用于临床,但这项初步评估很有前景,足以证明对更大数据集和不断发展的技术进行评估是合理的,以确定准确性是否可以提高。
能否从数字图像开发基于人工智能(AI)的预测模型,以准确区分深色皮肤患者的卡波西肉瘤(KS)和非KS?基于AI的预测模型对乌干达患者皮肤病变数字图像的评估在诊断KS方面具有中等准确性。在撒哈拉以南非洲,KS的发病率和死亡率很高,由于专业人员和技术供应有限,诊断延迟很常见,基于可疑病变数字图像构建的基于AI的预测模型可能有一天会加快KS的诊断。