Developing an algorithm across integrated healthcare systems to identify a history of cancer using electronic medical records

Author:

Gander Jennifer C1,Maiyani Mahesh2,White Larissa L2,Sterrett Andrew T2,Güney Brianna1,Pawloski Pamala A3,DeFor Teri3,Olsen YuanYuan3,Rybicki Benjamin A4,Neslund-Dudas Christine4,Sheth Darsheen4,Krajenta Richard4,Purushothaman Devaki4,Honda Stacey56,Yonehara Cyndee5,Goddard Katrina A B7,Prado Yolanda K7,Ahsan Habibul8,Kibriya Muhammad G8,Aschebrook-Kilfoy Briseis8,Chan Chun-Hung9,Hague Sarah9,Clarke Christina L2,Thompson Brooke2,Sawyer Jennifer2,Gaudet Mia M10,Feigelson Heather Spencer2

Affiliation:

1. Center for Research and Evaluation, Kaiser Permanente Georgia , Atlanta, Georgia, USA

2. Institute for Health Research, Kaiser Permanente Colorado , Aurora, Colorado, USA

3. HealthPartners Institute , Bloomington, Minnesota, USA

4. Department of Public Health Sciences, Henry Ford Health System , Detroit, Michigan, USA

5. Center for Integrated Healthcare , Kaiser Permanente Hawaii , Honolulu, Hawaii, USA

6. Hawaii Permanente Medical Group , Kaiser Permanente Hawaii , Honolulu, Hawaii, USA

7. Department of Translational and Applied Genomics, Center for Health Research, Kaiser Permanente Northwest , Portland, Oregon, USA

8. Institute for Population and Precision Health, University of Chicago , Chicago, Illinois, USA

9. Sanford Research, Sanford Health , Sioux Falls, South Dakota, USA

10. Trans Divisional Research Program, Division of Cancer Epidemiology and Genetics, National Cancer Institute , Bethesda, Maryland, USA

Abstract

AbstractObjectiveTumor registries in integrated healthcare systems (IHCS) have high precision for identifying incident cancer but often miss recently diagnosed cancers or those diagnosed outside of the IHCS. We developed an algorithm using the electronic medical record (EMR) to identify people with a history of cancer not captured in the tumor registry to identify adults, aged 40–65 years, with no history of cancer.Materials and MethodsThe algorithm was developed at Kaiser Permanente Colorado, and then applied to 7 other IHCS. We included tumor registry data, diagnosis and procedure codes, chemotherapy files, oncology encounters, and revenue data to develop the algorithm. Each IHCS adapted the algorithm to their EMR data and calculated sensitivity and specificity to evaluate the algorithm’s performance after iterative chart review.ResultsWe included data from over 1.26 million eligible people across 8 IHCS; 55 601 (4.4%) were in a tumor registry, and 44848 (3.5%) had a reported cancer not captured in a registry. The common attributes of the final algorithm at each site were diagnosis and procedure codes. The sensitivity of the algorithm at each IHCS was 90.65%–100%, and the specificity was 87.91%–100%.DiscussionRelying only on tumor registry data would miss nearly half of the identified cancers. Our algorithm was robust and required only minor modifications to adapt to other EMR systems.ConclusionThis algorithm can identify cancer cases regardless of when the diagnosis occurred and may be useful for a variety of research applications or quality improvement projects around cancer care.

Funder

National Cancer Institute

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

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