Cargando…

Early-stage COVID-19 pandemic observations on pulmonary embolism using nationwide multi-institutional data harvesting

We introduce a multi-institutional data harvesting (MIDH) method for longitudinal observation of medical imaging utilization and reporting. By tracking both large-scale utilization and clinical imaging results data, the MIDH approach is targeted at measuring surrogates for important disease-related...

Descripción completa

Detalles Bibliográficos
Autores principales: Wismüller, Axel, DSouza, Adora M., Abidin, Anas Z., Ali Vosoughi, M., Gange, Christopher, Cortopassi, Isabel O., Bozovic, Gracijela, Bankier, Alexander A., Batra, Kiran, Chodakiewitz, Yosef, Xi, Yin, Whitlow, Christopher T., Ponnatapura, Janardhana, Wendt, Gary J., Weinberg, Eric P., Stockmaster, Larry, Shrier, David A., Shin, Min Chul, Modi, Roshan, Lo, Hao Steven, Kligerman, Seth, Hamid, Aws, Hahn, Lewis D., Garcia, Glenn M., Chung, Jonathan H., Altes, Talissa, Abbara, Suhny, Bader, Anna S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9388980/
https://www.ncbi.nlm.nih.gov/pubmed/35986059
http://dx.doi.org/10.1038/s41746-022-00653-2
_version_ 1784770335422283776
author Wismüller, Axel
DSouza, Adora M.
Abidin, Anas Z.
Ali Vosoughi, M.
Gange, Christopher
Cortopassi, Isabel O.
Bozovic, Gracijela
Bankier, Alexander A.
Batra, Kiran
Chodakiewitz, Yosef
Xi, Yin
Whitlow, Christopher T.
Ponnatapura, Janardhana
Wendt, Gary J.
Weinberg, Eric P.
Stockmaster, Larry
Shrier, David A.
Shin, Min Chul
Modi, Roshan
Lo, Hao Steven
Kligerman, Seth
Hamid, Aws
Hahn, Lewis D.
Garcia, Glenn M.
Chung, Jonathan H.
Altes, Talissa
Abbara, Suhny
Bader, Anna S.
author_facet Wismüller, Axel
DSouza, Adora M.
Abidin, Anas Z.
Ali Vosoughi, M.
Gange, Christopher
Cortopassi, Isabel O.
Bozovic, Gracijela
Bankier, Alexander A.
Batra, Kiran
Chodakiewitz, Yosef
Xi, Yin
Whitlow, Christopher T.
Ponnatapura, Janardhana
Wendt, Gary J.
Weinberg, Eric P.
Stockmaster, Larry
Shrier, David A.
Shin, Min Chul
Modi, Roshan
Lo, Hao Steven
Kligerman, Seth
Hamid, Aws
Hahn, Lewis D.
Garcia, Glenn M.
Chung, Jonathan H.
Altes, Talissa
Abbara, Suhny
Bader, Anna S.
author_sort Wismüller, Axel
collection PubMed
description We introduce a multi-institutional data harvesting (MIDH) method for longitudinal observation of medical imaging utilization and reporting. By tracking both large-scale utilization and clinical imaging results data, the MIDH approach is targeted at measuring surrogates for important disease-related observational quantities over time. To quantitatively investigate its clinical applicability, we performed a retrospective multi-institutional study encompassing 13 healthcare systems throughout the United States before and after the 2020 COVID-19 pandemic. Using repurposed software infrastructure of a commercial AI-based image analysis service, we harvested data on medical imaging service requests and radiology reports for 40,037 computed tomography pulmonary angiograms (CTPA) to evaluate for pulmonary embolism (PE). Specifically, we compared two 70-day observational periods, namely (i) a pre-pandemic control period from 11/25/2019 through 2/2/2020, and (ii) a period during the early COVID-19 pandemic from 3/8/2020 through 5/16/2020. Natural language processing (NLP) on final radiology reports served as the ground truth for identifying positive PE cases, where we found an NLP accuracy of 98% for classifying radiology reports as positive or negative for PE based on a manual review of 2,400 radiology reports. Fewer CTPA exams were performed during the early COVID-19 pandemic than during the pre-pandemic period (9806 vs. 12,106). However, the PE positivity rate was significantly higher (11.6 vs. 9.9%, p < 10(−4)) with an excess of 92 PE cases during the early COVID-19 outbreak, i.e., ~1.3 daily PE cases more than statistically expected. Our results suggest that MIDH can contribute value as an exploratory tool, aiming at a better understanding of pandemic-related effects on healthcare.
format Online
Article
Text
id pubmed-9388980
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Nature Publishing Group UK
record_format MEDLINE/PubMed
spelling pubmed-93889802022-08-19 Early-stage COVID-19 pandemic observations on pulmonary embolism using nationwide multi-institutional data harvesting Wismüller, Axel DSouza, Adora M. Abidin, Anas Z. Ali Vosoughi, M. Gange, Christopher Cortopassi, Isabel O. Bozovic, Gracijela Bankier, Alexander A. Batra, Kiran Chodakiewitz, Yosef Xi, Yin Whitlow, Christopher T. Ponnatapura, Janardhana Wendt, Gary J. Weinberg, Eric P. Stockmaster, Larry Shrier, David A. Shin, Min Chul Modi, Roshan Lo, Hao Steven Kligerman, Seth Hamid, Aws Hahn, Lewis D. Garcia, Glenn M. Chung, Jonathan H. Altes, Talissa Abbara, Suhny Bader, Anna S. NPJ Digit Med Article We introduce a multi-institutional data harvesting (MIDH) method for longitudinal observation of medical imaging utilization and reporting. By tracking both large-scale utilization and clinical imaging results data, the MIDH approach is targeted at measuring surrogates for important disease-related observational quantities over time. To quantitatively investigate its clinical applicability, we performed a retrospective multi-institutional study encompassing 13 healthcare systems throughout the United States before and after the 2020 COVID-19 pandemic. Using repurposed software infrastructure of a commercial AI-based image analysis service, we harvested data on medical imaging service requests and radiology reports for 40,037 computed tomography pulmonary angiograms (CTPA) to evaluate for pulmonary embolism (PE). Specifically, we compared two 70-day observational periods, namely (i) a pre-pandemic control period from 11/25/2019 through 2/2/2020, and (ii) a period during the early COVID-19 pandemic from 3/8/2020 through 5/16/2020. Natural language processing (NLP) on final radiology reports served as the ground truth for identifying positive PE cases, where we found an NLP accuracy of 98% for classifying radiology reports as positive or negative for PE based on a manual review of 2,400 radiology reports. Fewer CTPA exams were performed during the early COVID-19 pandemic than during the pre-pandemic period (9806 vs. 12,106). However, the PE positivity rate was significantly higher (11.6 vs. 9.9%, p < 10(−4)) with an excess of 92 PE cases during the early COVID-19 outbreak, i.e., ~1.3 daily PE cases more than statistically expected. Our results suggest that MIDH can contribute value as an exploratory tool, aiming at a better understanding of pandemic-related effects on healthcare. Nature Publishing Group UK 2022-08-19 /pmc/articles/PMC9388980/ /pubmed/35986059 http://dx.doi.org/10.1038/s41746-022-00653-2 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons license, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons license and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this license, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Wismüller, Axel
DSouza, Adora M.
Abidin, Anas Z.
Ali Vosoughi, M.
Gange, Christopher
Cortopassi, Isabel O.
Bozovic, Gracijela
Bankier, Alexander A.
Batra, Kiran
Chodakiewitz, Yosef
Xi, Yin
Whitlow, Christopher T.
Ponnatapura, Janardhana
Wendt, Gary J.
Weinberg, Eric P.
Stockmaster, Larry
Shrier, David A.
Shin, Min Chul
Modi, Roshan
Lo, Hao Steven
Kligerman, Seth
Hamid, Aws
Hahn, Lewis D.
Garcia, Glenn M.
Chung, Jonathan H.
Altes, Talissa
Abbara, Suhny
Bader, Anna S.
Early-stage COVID-19 pandemic observations on pulmonary embolism using nationwide multi-institutional data harvesting
title Early-stage COVID-19 pandemic observations on pulmonary embolism using nationwide multi-institutional data harvesting
title_full Early-stage COVID-19 pandemic observations on pulmonary embolism using nationwide multi-institutional data harvesting
title_fullStr Early-stage COVID-19 pandemic observations on pulmonary embolism using nationwide multi-institutional data harvesting
title_full_unstemmed Early-stage COVID-19 pandemic observations on pulmonary embolism using nationwide multi-institutional data harvesting
title_short Early-stage COVID-19 pandemic observations on pulmonary embolism using nationwide multi-institutional data harvesting
title_sort early-stage covid-19 pandemic observations on pulmonary embolism using nationwide multi-institutional data harvesting
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9388980/
https://www.ncbi.nlm.nih.gov/pubmed/35986059
http://dx.doi.org/10.1038/s41746-022-00653-2
work_keys_str_mv AT wismulleraxel earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT dsouzaadoram earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT abidinanasz earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT alivosoughim earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT gangechristopher earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT cortopassiisabelo earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT bozovicgracijela earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT bankieralexandera earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT batrakiran earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT chodakiewitzyosef earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT xiyin earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT whitlowchristophert earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT ponnatapurajanardhana earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT wendtgaryj earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT weinbergericp earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT stockmasterlarry earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT shrierdavida earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT shinminchul earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT modiroshan earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT lohaosteven earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT kligermanseth earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT hamidaws earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT hahnlewisd earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT garciaglennm earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT chungjonathanh earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT altestalissa earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT abbarasuhny earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting
AT baderannas earlystagecovid19pandemicobservationsonpulmonaryembolismusingnationwidemultiinstitutionaldataharvesting