Diagnostic errors in uncommon conditions: a systematic review of case reports of diagnostic errors

Author:

Harada Yukinori1,Watari Takashi2,Nagano Hiroyuki3,Suzuki Tomoharu4,Kunitomo Kotaro5,Miyagami Taiju6ORCID,Aita Tetsuro7,Ishizuka Kosuke8ORCID,Maebashi Mika9,Harada Taku10,Sakamoto Tetsu1,Tomiyama Shusaku1,Shimizu Taro1

Affiliation:

1. Department of Diagnostic and Generalist Medicine , Dokkyo Medical University , Shimotsuga-Gun , Japan

2. General Medicine Center , Shimane University Hospital , Izumo , Japan

3. Department of Healthcare Economics and Quality Management , Graduate School of Medicine , Kyoto University , Kyoto , Japan

4. Urasoe General Hospital , Urasoe , Japan

5. National Hospital Organisation Kumamoto Medical Center , Kumamoto , Japan

6. Juntendo Daigaku , Bunkyo-Ku , Japan

7. Department of General Internal Medicine , Fukushima Medical University , Fukushima , Japan

8. Department of General Medicine , Yokohama City University School of Medicine , Yokohama , Japan

9. Nasu Red Cross Hospital , Otawara , Japan

10. Division of General Medicine , Nerima Hikarigaoka Hospital , Nerima-Ku , Tokyo

Abstract

Abstract Objectives To assess the usefulness of case reports as sources for research on diagnostic errors in uncommon diseases and atypical presentations. Content We reviewed 563 case reports of diagnostic error. The commonality of the final diagnoses was classified based on the description in the articles, Orphanet, or epidemiological data on available references; the typicality of presentation was classified based on the description in the articles and the judgment of the physician researchers. Diagnosis Error Evaluation and Research (DEER), Reliable Diagnosis Challenges (RDC), and Generic Diagnostic Pitfalls (GDP) taxonomies were used to assess the factors contributing to diagnostic errors. Summary and outlook Excluding three cases in that commonality could not be classified, 560 cases were classified into four categories: typical presentations of common diseases (60, 10.7 %), atypical presentations of common diseases (35, 6.2 %), typical presentations of uncommon diseases (276, 49.3 %), and atypical presentations of uncommon diseases (189, 33.8 %). The most important DEER taxonomy was “Failure/delay in considering the diagnosis” among the four categories, whereas the most important RDC and GDP taxonomies varied with the categories. Case reports can be a useful data source for research on the diagnostic errors of uncommon diseases with or without atypical presentations.

Publisher

Walter de Gruyter GmbH

Subject

Biochemistry (medical),Clinical Biochemistry,Public Health, Environmental and Occupational Health,Health Policy,Medicine (miscellaneous)

Reference29 articles.

1. Yang, D, Fineberg, HV, Cosby, K. Diagnostic excellence. JAMA 2021;326:1905–6. https://doi.org/10.1001/jama.2021.19493.

2. Committee on Diagnostic Error in Health Care, Board on Health Care Services, Institute of Medicine, The National Academies of Sciences, Engineering, and Medicine. Improving diagnosis in health care. Balogh, EP, Miller, BT, Ball, JR, editors. Washington, DC: National Academies Press (US); 2015.

3. Measure Dx: a resource to identify, analyze, and learn from diagnostic safety events. Content last reviewed April 2023. Rockville, MD: Agency for Healthcare Research and Quality. Available from: https://www.ahrq.gov/patient-safety/settings/multiple/measure-dx.html.

4. Kwan, JL, Singh, H. General internists in pursuit of diagnostic excellence in primary care: a #ProudtobeGIM thread that unites us all. J Gen Intern Med 2018;33:395–6. https://doi.org/10.1007/s11606-018-4343-8.

5. Singh, H, Giardina, TD, Meyer, AN, Forjuoh, SN, Reis, MD, Thomas, EJ. Types and origins of diagnostic errors in primary care settings. JAMA Intern Med 2013;173:418–25. https://doi.org/10.1001/jamainternmed.2013.2777.

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