Sample-to-answer platform for the clinical evaluation of COVID-19 using a deep learning-assisted smartphone-based assay

Seungmin Lee(Kwangwoon University), Sunmok Kim(Kwangwoon University), Dae Sung Yoon(Korea University), Jeong‐Soo Park(Kwangwoon University), Hyowon Woo(Kwangwoon University), Dong‐Ho Lee, Sung‐Yeon Cho(Catholic University of Korea), Chulmin Park(Catholic University of Korea), Yong Kyoung Yoo(Catholic Kwandong University), Ki- Baek Lee(Kwangwoon University), Jeong Hoon Lee(Kwangwoon University)
Nature Communications
April 24, 2023
Cited by 84Open Access
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Abstract

Abstract Since many lateral flow assays (LFA) are tested daily, the improvement in accuracy can greatly impact individual patient care and public health. However, current self-testing for COVID-19 detection suffers from low accuracy, mainly due to the LFA sensitivity and reading ambiguities. Here, we present deep learning-assisted smartphone-based LFA (SMART AI -LFA) diagnostics to provide accurate decisions with higher sensitivity. Combining clinical data learning and two-step algorithms enables a cradle-free on-site assay with higher accuracy than the untrained individuals and human experts via blind tests of clinical data ( n = 1500). We acquired 98% accuracy across 135 smartphone application-based clinical tests with different users/smartphones. Furthermore, with more low-titer tests, we observed that the accuracy of SMART AI -LFA was maintained at over 99% while there was a significant decrease in human accuracy, indicating the reliable performance of SMART AI -LFA. We envision a smartphone-based SMART AI -LFA that allows continuously enhanced performance by adding clinical tests and satisfies the new criterion for digitalized real-time diagnostics.


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