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Augmented curation of clinical notes from a massive EHR system reveals symptoms of impending COVID-19 diagnosis

139

Citations

19

References

2020

Year

Abstract

Understanding temporal dynamics of COVID-19 symptoms could provide fine-grained resolution to guide clinical decision-making. Here, we use deep neural networks over an institution-wide platform for the augmented curation of clinical notes from 77,167 patients subjected to COVID-19 PCR testing. By contrasting Electronic Health Record (EHR)-derived symptoms of COVID-19-positive (COVID<i><sub>pos</sub></i>; n = 2,317) versus COVID-19-negative (COVID<i><sub>neg</sub></i>; n = 74,850) patients for the week preceding the PCR testing date, we identify anosmia/dysgeusia (27.1-fold), fever/chills (2.6-fold), respiratory difficulty (2.2-fold), cough (2.2-fold), myalgia/arthralgia (2-fold), and diarrhea (1.4-fold) as significantly amplified in COVID<i><sub>pos</sub></i> over COVID<i><sub>neg</sub></i> patients. The combination of cough and fever/chills has 4.2-fold amplification in COVID<i><sub>pos</sub></i> patients during the week prior to PCR testing, in addition to anosmia/dysgeusia, constitutes the earliest EHR-derived signature of COVID-19. This study introduces an <i>Augmented Intelligence</i> platform for the real-time synthesis of institutional biomedical knowledge. The platform holds tremendous potential for scaling up curation throughput, thus enabling EHR-powered early disease diagnosis.

References

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