Developing a Data and Analytics Platform to Enable a Breast Cancer Learning Health System at a Regional Cancer Center

Author:

Petch Jeremy1234ORCID,Kempainnen Joel1,Pettengell Christopher5,Aviv Steven5,Butler Bill6,Pond Greg7,Saha Ashirbani178ORCID,Bogach Jessica9,Allard-Coutu Alexandria9,Sztur Peter1ORCID,Ranisau Jonathan1ORCID,Levine Mark67ORCID

Affiliation:

1. Centre for Data Science and Digital Health, Hamilton Health Sciences, Hamilton, Canada

2. Institute for Health Policy Management and Evaluation, Dalla Lana School of Public Health, University of Toronto, Toronto, Canada

3. Division of Cardiology, Department of Medicine, Faculty of Health Sciences, McMaster University, Hamilton, Canada

4. Population Health Research Institute, Hamilton Health Sciences, Hamilton, Canada

5. Pentavere Research Group, Toronto, Canada

6. Hamilton Health Sciences, Hamilton, Canada

7. Escarpment Cancer Research Institute, Hamilton Health Sciences, Hamilton, Canada

8. Department of Oncology, Faculty of Health Sciences, McMaster University, Hamilton, Canada

9. Department of Surgery, Faculty of Health Sciences, McMaster University, Hamilton, Canada

Abstract

PURPOSE This study documents the creation of automated, longitudinal, and prospective data and analytics platform for breast cancer at a regional cancer center. This platform combines principles of data warehousing with natural language processing (NLP) to provide the integrated, timely, meaningful, high-quality, and actionable data required to establish a learning health system. METHODS Data from six hospital information systems and one external data source were integrated on a nightly basis by automated extract/transform/load jobs. Free-text clinical documentation was processed using a commercial NLP engine. RESULTS The platform contains 141 data elements of 7,019 patients with newly diagnosed breast cancer who received care at our regional cancer center from January 1, 2014, to June 3, 2022. Daily updating of the database takes an average of 56 minutes. Evaluation of the tuning of NLP jobs found overall high performance, with an F1 of 1.0 for 19 variables, with a further 16 variables with an F1 of > 0.95. CONCLUSION This study describes how data warehousing combined with NLP can be used to create a prospective data and analytics platform to enable a learning health system. Although upfront time investment required to create the platform was considerable, now that it has been developed, daily data processing is completed automatically in less than an hour.

Publisher

American Society of Clinical Oncology (ASCO)

Subject

General Medicine

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