Malaria RDT (mRDT) interpretation accuracy by frontline health workers compared to AI in Kano state, Nigeria.

BMC digital health Pub Date : 2025-01-01 Epub Date: 2025-09-25 DOI:10.1186/s44247-025-00190-4
Sasha Frade, Shawna Cooper, Sam Smedinghoff, David Hattery, Yongshao Ruan, Paul Isabelli, Nirmal Ravi, Megan McLaughlin, Lynn Metz, Barry Finette
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Abstract

Background: Although malaria is preventable and treatable, it continues to be a significant cause of illness and death. Early diagnosis through testing is critical in reducing malaria-related morbidity and mortality. Malaria rapid diagnostic tests (mRDTs) are preferred for their ease of use, sensitivity, and rapid results, yet misadministration and misinterpretation errors persist. This study investigated whether pairing an existing application with an AI-based software could enhance interpretation accuracy among Frontline Healthcare Workers (FHWs) in Kano State, Nigeria.

Methods: A comparative analysis was conducted, examining mRDT interpretations by FHWs, trained expert mRDT reviewers (Panel Readers), and AI-based computer vision algorithms. The accuracy comparisons included: (1) AI interpretation versus Panel Read interpretation, (2) FHW interpretation versus Panel Read interpretation, (3) FHW interpretation versus AI interpretation, and (4) AI performance on faint positive lines. Accuracy was reported as a weighted F1 score, reflecting the harmonic mean of recall (sensitivity) and precision (positive predictive value).

Results: The AI algorithm demonstrated high accuracy, matching Panel Read interpretations correctly for positives 96.38% of the time and negatives 97.12%. FHW interpretations agreed with the Panel Read 96.82% on positives and 94.31% on negatives. Comparison of FHW and AI interpretations showed 97.52% agreement on positives and 93.38% on negatives. The overall accuracy was higher for AI (weighted F1 score of 96.4) compared to FHWs (95.3). Notably, the AI accurately identified 90.2% of 163 faint positive mRDTs, whereas FHWs correctly identified 76.1%.

Conclusion: AI-based computer vision algorithms performed comparably to trained and experienced FHWs and exceeded FHW performance in identifying faint positives. These findings demonstrate the potential of AI technology to enhance the accuracy of mRDT interpretation, thereby improving malaria diagnosis and reporting accuracy in malaria-endemic, resource-limited settings.

Supplementary information: The online version contains supplementary material available at 10.1186/s44247-025-00190-4.

尼日利亚卡诺州一线卫生工作者与人工智能的疟疾RDT (mRDT)解释精度比较。
背景:虽然疟疾是可以预防和治疗的,但它仍然是造成疾病和死亡的一个重要原因。通过检测进行早期诊断对于降低与疟疾有关的发病率和死亡率至关重要。疟疾快速诊断检测(mRDTs)因其易于使用、灵敏度高和结果快速而受到青睐,但误用和误读错误仍然存在。本研究调查了将现有应用程序与基于人工智能的软件配对是否可以提高尼日利亚卡诺州一线卫生保健工作者(FHWs)的口译准确性。方法:对FHWs、训练有素的mRDT专家审稿人(Panel Readers)和基于人工智能的计算机视觉算法的mRDT解释进行了比较分析。准确性比较包括:(1)AI解译与Panel Read解译,(2)FHW解译与Panel Read解译,(3)FHW解译与AI解译,以及(4)AI在微弱正线上的表现。准确度报告为加权F1分数,反映召回率(敏感性)和精度(阳性预测值)的调和平均值。结果:人工智能算法具有较高的准确率,阳性和阴性的准确率分别为96.38%和97.12%。FHW的解释同意专家组96.82%的正面意见和94.31%的负面意见。FHW与AI解译结果的阳性符合率为97.52%,阴性符合率为93.38%。AI的总体准确率(F1加权得分为96.4)高于FHWs(95.3)。值得注意的是,AI准确识别了163个微弱阳性mrdt中的90.2%,而FHWs正确识别了76.1%。结论:基于人工智能的计算机视觉算法在识别微弱阳性方面的表现与训练有素和经验丰富的FHW相当,并且超过了FHW的表现。这些发现表明,人工智能技术有潜力提高mRDT解释的准确性,从而在疟疾流行、资源有限的环境中提高疟疾诊断和报告的准确性。补充信息:在线版本包含补充资料,可在10.1186/s44247-025-00190-4获得。
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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