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Machine Learning Model Predicts Histological Prostatitis in Patients With Benign Prostatic Hyperplasia

Machine Learning Model Predicts Histological Prostatitis in Patients With Benign Prostatic Hyperplas…
Photo by CDC / Unsplash
Key Takeaway
Consider this model for risk stratification of histological prostatitis in BPH patients, noting single-center limitations.

This single-center retrospective machine-learning prediction model study with internal validation included 723 patients admitted to the urology department of a tertiary medical center for benign prostatic hyperplasia. The primary outcome assessed was histological prostatitis within this specific population of admitted patients. The setting was a tertiary medical center.

Among the cohort, 387 patients had histological prostatitis, representing a prevalence of 53.5%. Secondary outcomes included discriminative ability, calibration, and net benefit. An artificial neural network model showed the best discriminative ability among six models, with an AUC of 0.852 (95% CI: 0.804–0.899). The model achieved the lowest Brier score of 0.160 and demonstrated the greatest net benefit across a wide range of threshold probabilities.

Key predictors included prostate volume, neutrophil-to-lymphocyte ratio, International Prostate Symptom Score, age, systemic immune–inflammation index, and acute urinary retention. Higher values or presence of acute urinary retention were associated with increased predicted risk. Limitations include the single-center design and internal validation only, which may limit generalizability to other settings and populations.

Safety data regarding adverse events were not reported. No follow-up duration was reported. The study suggests potential utility in facilitating early identification of high-risk individuals, supporting refined risk stratification, and optimizing perioperative decision-making. However, the observational nature precludes causal inference.

Study Details

Study typeCohort
EvidenceLevel 3
PublishedApr 2026
View Original Abstract ↓
Histological prostatitis is highly prevalent among patients with benign prostatic hyperplasia (BPH) and has been shown to be closely associated with disease progression and postoperative outcomes. However, its diagnosis still mainly relies on postoperative or biopsy pathology, and there is a lack of non-invasive tools to estimate the risk of histological inflammation before surgery or biopsy. This was a single-center retrospective machine-learning prediction model study with internal validation, involving 723 patients admitted to the urology department of a tertiary medical center for BPH between June 2020 and June 2023. The cohort was randomly divided into a training set and a validation set in a 7:3 ratio. Least absolute shrinkage and selection operator (LASSO) regression and the Boruta algorithm were used for feature selection, on the basis of which six machine learning models were constructed. Model performance and clinical net benefit were evaluated using the area under the receiver operating characteristic curve, calibration, and decision curve analysis. Shapley additive explanations (SHAP) were applied to provide interpretability at both the global and individual levels, and the best-performing model was further deployed as an online prediction tool. Among the 723 patients, 387 (53.5%) had histological prostatitis. Of the six machine learning models, the artificial neural network (ANN) model showed the best discriminative ability, with an AUC of 0.852 [95% confidence interval (CI): 0.804–0.899] in the validation set, overall performance superior to the other models, and the lowest Brier score (0.160). It also provided the greatest net benefit across a wide range of threshold probabilities. SHAP analysis indicated that prostate volume (PV), neutrophil-to-lymphocyte ratio (NLR), International Prostate Symptom Score (IPSS), age, systemic immune–inflammation index (SII), and acute urinary retention (AUR) were the key predictors driving model performance; higher values of these variables (or the presence of AUR) were associated with an increased predicted risk of histological prostatitis Machine learning models, particularly the ANN model, showed good discriminative ability and reasonable calibration for predicting the risk of histological prostatic inflammation. Age, prostate volume, IPSS score, AUR, NLR, and SII were identified as the most important predictors. This prediction model enables accurate and interpretable risk assessment of histological prostatitis in patients with BPH, thereby facilitating early identification of high-risk individuals, supporting refined risk stratification, and optimizing perioperative decision-making.
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