Application of Artificial Intelligence Methods to Pharmacy Data for Cancer Surveillance and Epidemiology Research: A Systematic Review

Author:

Grothen Andrew E.1ORCID,Tennant Bethany2ORCID,Wang Catherine1ORCID,Torres Andrea2,Bloodgood Sheppard Bonny2,Abastillas Glenn3,Matatova Marina1,Warner Jeremy L.4ORCID,Rivera Donna R.1ORCID

Affiliation:

1. Surveillance Research Program, Division of Cancer Control and Population Sciences, National Cancer Institute, Rockville, MD

2. ICF Next, Fairfax, VA

3. Westat, Rockville, MD

4. Vanderbilt University, Nashville, TN

Abstract

PURPOSEThe implementation and utilization of electronic health records is generating a large volume and variety of data, which are difficult to process using traditional techniques. However, these data could help answer important questions in cancer surveillance and epidemiology research. Artificial intelligence (AI) data processing methods are capable of evaluating large volumes of data, yet current literature on their use in this context of pharmacy informatics is not well characterized.METHODSA systematic literature review was conducted to evaluate relevant publications within four domains (cancer, pharmacy, AI methods, population science) across PubMed, EMBASE, Scopus, and the Cochrane Library and included all publications indexed between July 17, 2008, and December 31, 2018. The search returned 3,271 publications, which were evaluated for inclusion.RESULTSThere were 36 studies that met criteria for full-text abstraction. Of those, only 45% specifically identified the pharmacy data source, and 55% specified drug agents or drug classes. Multiple AI methods were used; 25% used machine learning (ML), 67% used natural language processing (NLP), and 8% combined ML and NLP.CONCLUSIONThis review demonstrates that the application of AI data methods for pharmacy informatics and cancer epidemiology research is expanding. However, the data sources and representations are often missing, challenging study replicability. In addition, there is no consistent format for reporting results, and one of the preferred metrics, F-score, is often missing. There is a resultant need for greater transparency of original data sources and performance of AI methods with pharmacy data to improve the translation of these results into meaningful outcomes.

Publisher

American Society of Clinical Oncology (ASCO)

Subject

General Medicine

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