4.5 Article

Applying advanced technologies to improve clinical trials: a systematic mapping study

Journal

SCIENTOMETRICS
Volume 126, Issue 2, Pages 1217-1238

Publisher

SPRINGER
DOI: 10.1007/s11192-020-03774-1

Keywords

Artificial intelligence; Machine learning; Deep learning; Internet of things; Clinical trials

Funding

  1. National natural science foundation of China [7187114]
  2. University of Shanghai for Science and Technology Development Project [2020KJFZ046]

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The increasing demand for new therapies and clinical interventions has led researchers to conduct numerous clinical trials. Advanced technologies such as artificial intelligence and machine learning are being utilized to improve efficiency and productivity in clinical trials. Research shows a growing interest in the field, with a focus on recruitment, eligibility, and validation studies. Further empirical studies are expected to implement AI, ML, DL, and IoT in clinical trials.
The increasing demand for new therapies and other clinical interventions has made researchers conduct many clinical trials. The high level of evidence generated by clinical trials makes them the main approach to evaluating new clinical interventions. The increasing amounts of data to be considered in the planning and conducting of clinical trials has led to higher costs and increased timelines of clinical trials, with low productivity. Advanced technologies including artificial intelligence, machine learning, deep learning, and the internet of things offer an opportunity to improve the efficiency and productivity of clinical trials at various stages. Although researchers have done some tangible work regarding the application of advanced technologies in clinical trials, the studies are yet to be mapped to give a general picture of the current state of research. This systematic mapping study was conducted to identify and analyze studies published on the role of advanced technologies in clinical trials. A search restricted to the period between 2010 and 2020 yielded a total of 443 articles. The analysis revealed a trend of increasing research interests in the area over the years. Recruitment and eligibility aspects were the main focus of the studies. The main research types were validation and evaluation studies. Most studies contributed methods and theories, hence there exists a gap for architecture, process, and metric contributions. In the future, more empirical studies are expected given the increasing interest to implement the AI, ML, DL, and IoT in clinical trials.

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