Accepted for/Published in: JMIR Medical Informatics
Date Submitted: Dec 14, 2021
Date Accepted: Sep 24, 2022
The application of graph theoretical analysis to complex networks in medical malpractice: Lessons learned from China
ABSTRACT
Background:
Studies have shown that hospitals or physicians with multiple malpractice claims are more likely to be involved in new claims; this finding indicates that medical malpractice may be clustered by institutions.
Objective:
We aimed to identify underlying mechanisms of medical malpractice that in the long term may contribute to developing interventions to reduce future claims and patient harm.
Methods:
This study extracted the semantic network in 6610 medical litigation records (unstructured data) obtained from a public judicial database in China; they represented the most serious cases of malpractice in the country. The medical malpractice network of China (MMNC) was presented as a knowledge graph based on the complex network theory; it employs the International Classification of Patient Safety from the World Health Organization as a reference.
Results:
We found that the MMNC was a scale-free network: the occurrence of medical malpractice in litigation cases was not random, but traceable. The results of the hub nodes revealed that orthopedics, obstetrics and gynecology, and emergency department were the three most frequent specialties that incurred malpractice; inadequate informed consent work constituted the most errors. Non-technical errors (e.g. inadequate informed consent) showed a higher centrality than technical errors.
Conclusions:
Hospitals and medical boards could apply our approach to detect hub nodes that are likely to benefit from interventions; doing so could effectively control medical risks. Clinical Trial: not applicable
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