Rise of Clinical Studies in the Field of Machine Learning: A Review of Data Registered in ClinicalTrials.gov
Although advances in machine-learning healthcare applications promise great potential for innovative medical care, few data are available on the translational status of these new technologies. We aimed to provide a comprehensive characterization of the development and status quo of clinical studies...
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doaj-693b29ebbb974af2a6535b1306d0b75c2021-05-31T23:42:01ZengMDPI AGInternational Journal of Environmental Research and Public Health1661-78271660-46012021-05-01185072507210.3390/ijerph18105072Rise of Clinical Studies in the Field of Machine Learning: A Review of Data Registered in ClinicalTrials.govClaus Zippel0Sabine Bohnet-Joschko1Chair of Management and Innovation in Health Care, Faculty of Management, Economics and Society, Witten/Herdecke University, 58448 Witten, GermanyChair of Management and Innovation in Health Care, Faculty of Management, Economics and Society, Witten/Herdecke University, 58448 Witten, GermanyAlthough advances in machine-learning healthcare applications promise great potential for innovative medical care, few data are available on the translational status of these new technologies. We aimed to provide a comprehensive characterization of the development and status quo of clinical studies in the field of machine learning. For this purpose, we performed a registry-based analysis of machine-learning-related studies that were published and first available in the ClinicalTrials.gov database until 2020, using the database’s study classification. In total, <i>n</i> = 358 eligible studies could be included in the analysis. Of these, 82% were initiated by academic institutions/university (hospitals) and 18% by industry sponsors. A total of 96% were national and 4% international. About half of the studies (47%) had at least one recruiting location in a country in North America, followed by Europe (37%) and Asia (15%). Most of the studies reported were initiated in the medical field of imaging (12%), followed by cardiology, psychiatry, anesthesia/intensive care medicine (all 11%) and neurology (10%). Although the majority of the clinical studies were still initiated in an academic research context, the first industry-financed projects on machine-learning-based algorithms are becoming visible. The number of clinical studies with machine-learning-related applications and the variety of medical challenges addressed serve to indicate their increasing importance in future clinical care. Finally, they also set a time frame for the adjustment of medical device-related regulation and governance.https://www.mdpi.com/1660-4601/18/10/5072machine learningdigital healthregistry analysisClinicalTrials.govdevice regulation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Claus Zippel Sabine Bohnet-Joschko |
spellingShingle |
Claus Zippel Sabine Bohnet-Joschko Rise of Clinical Studies in the Field of Machine Learning: A Review of Data Registered in ClinicalTrials.gov International Journal of Environmental Research and Public Health machine learning digital health registry analysis ClinicalTrials.gov device regulation |
author_facet |
Claus Zippel Sabine Bohnet-Joschko |
author_sort |
Claus Zippel |
title |
Rise of Clinical Studies in the Field of Machine Learning: A Review of Data Registered in ClinicalTrials.gov |
title_short |
Rise of Clinical Studies in the Field of Machine Learning: A Review of Data Registered in ClinicalTrials.gov |
title_full |
Rise of Clinical Studies in the Field of Machine Learning: A Review of Data Registered in ClinicalTrials.gov |
title_fullStr |
Rise of Clinical Studies in the Field of Machine Learning: A Review of Data Registered in ClinicalTrials.gov |
title_full_unstemmed |
Rise of Clinical Studies in the Field of Machine Learning: A Review of Data Registered in ClinicalTrials.gov |
title_sort |
rise of clinical studies in the field of machine learning: a review of data registered in clinicaltrials.gov |
publisher |
MDPI AG |
series |
International Journal of Environmental Research and Public Health |
issn |
1661-7827 1660-4601 |
publishDate |
2021-05-01 |
description |
Although advances in machine-learning healthcare applications promise great potential for innovative medical care, few data are available on the translational status of these new technologies. We aimed to provide a comprehensive characterization of the development and status quo of clinical studies in the field of machine learning. For this purpose, we performed a registry-based analysis of machine-learning-related studies that were published and first available in the ClinicalTrials.gov database until 2020, using the database’s study classification. In total, <i>n</i> = 358 eligible studies could be included in the analysis. Of these, 82% were initiated by academic institutions/university (hospitals) and 18% by industry sponsors. A total of 96% were national and 4% international. About half of the studies (47%) had at least one recruiting location in a country in North America, followed by Europe (37%) and Asia (15%). Most of the studies reported were initiated in the medical field of imaging (12%), followed by cardiology, psychiatry, anesthesia/intensive care medicine (all 11%) and neurology (10%). Although the majority of the clinical studies were still initiated in an academic research context, the first industry-financed projects on machine-learning-based algorithms are becoming visible. The number of clinical studies with machine-learning-related applications and the variety of medical challenges addressed serve to indicate their increasing importance in future clinical care. Finally, they also set a time frame for the adjustment of medical device-related regulation and governance. |
topic |
machine learning digital health registry analysis ClinicalTrials.gov device regulation |
url |
https://www.mdpi.com/1660-4601/18/10/5072 |
work_keys_str_mv |
AT clauszippel riseofclinicalstudiesinthefieldofmachinelearningareviewofdataregisteredinclinicaltrialsgov AT sabinebohnetjoschko riseofclinicalstudiesinthefieldofmachinelearningareviewofdataregisteredinclinicaltrialsgov |
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