Bermejo-Peláez David, Medina Narda, Álamo Elisa, Soto-Debran Juan Carlos, Bonilla Oscar, Luengo-Oroz Miguel, Rodriguez-Tudela Juan Luis, Alastruey-Izquierdo Ana
Spotlab, 28040 Madrid, Spain.
Mycology Reference Laboratory, National Center for Microbiology, Instituto de Salud Carlos III, 28220 Madrid, Spain.
J Fungi (Basel). 2023 Feb 7;9(2):217. doi: 10.3390/jof9020217.
Cryptococcosis is a fungal infection that causes serious illness, particularly in immunocompromised individuals such as people living with HIV. Point of care tests (POCT) can help identify and diagnose patients with several advantages including rapid results and ease of use. The cryptococcal antigen (CrAg) lateral flow assay (LFA) has demonstrated excellent performance in diagnosing cryptococcosis, and it is particularly useful in resource-limited settings where laboratory-based tests may not be readily available. The use of artificial intelligence (AI) for the interpretation of rapid diagnostic tests can improve the accuracy and speed of test results, as well as reduce the cost and workload of healthcare professionals, reducing subjectivity associated with its interpretation. In this work, we analyze a smartphone-based digital system assisted by AI to automatically interpret CrAg LFA as well as to estimate the antigen concentration in the strip. The system showed excellent performance for predicting LFA qualitative interpretation with an area under the receiver operating characteristic curve of 0.997. On the other hand, its potential to predict antigen concentration based solely on a photograph of the LFA has also been demonstrated, finding a strong correlation between band intensity and antigen concentration, with a Pearson correlation coefficient of 0.953. The system, which is connected to a cloud web platform, allows for case identification, quality control, and real-time monitoring.
隐球菌病是一种真菌感染,会引发严重疾病,尤其是在免疫功能低下的个体中,如艾滋病毒感染者。即时检验(POCT)有助于识别和诊断患者,具有多项优势,包括结果快速且使用便捷。隐球菌抗原(CrAg)侧向流动分析(LFA)在诊断隐球菌病方面表现出色,在资源有限的环境中尤其有用,因为在这些环境中基于实验室的检测可能无法随时进行。使用人工智能(AI)来解读快速诊断测试可以提高测试结果的准确性和速度,还能降低医疗专业人员的成本和工作量,减少与结果解读相关的主观性。在这项工作中,我们分析了一种基于智能手机的数字系统,该系统借助AI自动解读CrAg LFA,并估算试纸上的抗原浓度。该系统在预测LFA定性解读方面表现出色,受试者工作特征曲线下面积为0.997。另一方面,其仅根据LFA照片预测抗原浓度的潜力也得到了证明,发现条带强度与抗原浓度之间存在很强的相关性,皮尔逊相关系数为0.953。该系统连接到云网络平台,可进行病例识别、质量控制和实时监测。