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Deciphering risk factors for severe postherpetic neuralgia in patients with herpes zoster: an interpretable machine learning approach

Authors
 Park, Soo Jung  ;  Han, Jinseon  ;  Choi, Jong Bum  ;  Min, Sang Kee  ;  Park, Jungchan  ;  Choi, Suein 
Citation
 REGIONAL ANESTHESIA AND PAIN MEDICINE, 2025-01 
Article Number
 rapm-2024-106003 
Journal Title
REGIONAL ANESTHESIA AND PAIN MEDICINE
ISSN
 1098-7339 
Issue Date
2025-01
Keywords
Neuralgia ; CHRONIC PAIN ; Quality Improvement ; Pain Measurement
Abstract
Introduction Postherpetic neuralgia (PHN) is a common complication of herpes zoster (HZ). This study aimed to use a large real-world electronic medical records database to determine the optimal machine learning model for predicting the progression to severe PHN and to identify the associated risk factors. Methods We analyzed the electronic medical records of 23,326 patients diagnosed with HZ from January 2010 to June 2020. PHN was defined as pain persisting for >= 90 days post-HZ, based on diagnostic and prescription codes. Five machine learning algorithms were compared with select the optimal predictive model and a subsequent risk factor analysis was conducted. Results Of the 23,326 patients reviewed, 8,878 met the eligibility criteria for the HZ cohort. Among these, 801 patients (9.0%) progressed to severe PHN. Among the various machine learning approaches, XGBoost-an approach that combines multiple decision trees to improve predictive accuracy-performed the best in predicting outcomes (F1 score, 0.351; accuracy, 0.900; area under the receiver operating characteristic curve, 0.787). Using this model, we revealed eight major risk factors: older age, female sex, history of shingles and cancer, use of immunosuppressants and antidepressants, intensive initial pain, and the neutrophil-to-lymphocyte ratio. When patients were categorized into low-risk and high-risk groups based on the predictive model, PHN was seven times more likely to occur in the high-risk group (p<0.001). Conclusions Leveraging machine learning analysis, this study identifies an optimal model for predicting severe PHN and highlights key associated risk factors. This model will enable the establishment of more proactive treatments for high-risk patients, potentially mitigating the progression to severe PHN.
Full Text
https://rapm.bmj.com/content/early/2025/01/08/rapm-2024-106003
DOI
10.1136/rapm-2024-106003
Appears in Collections:
1. College of Medicine (의과대학) > Dept. of Anesthesiology and Pain Medicine (마취통증의학교실) > 1. Journal Papers
Yonsei Authors
Park, Soo Jung(박수정) ORCID logo https://orcid.org/0000-0003-2963-1394
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/208745
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