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Introduction: Scarring significantly impacts patient quality of life, yet traditional assessments often rely on subjective evaluations, resulting in variability in predictions. This study aimed to evaluate the predictive accuracy of a Smart Image Analysis ChatGPT model in forecasting scar characteristics.
Methods: This single-institution prospective cohort study included 40 patients who underwent plastic surgery. Scar images were captured at 3 and 12 months, assessing characteristics such as vascularity, pigmentation, height, and width. The ChatGPT model predicted binary outcomes (good vs. bad scars) and continuous outcomes. Predictive accuracy was measured using metrics including mean absolute error (MAE), mean squared error (MSE), root mean squared error (RMSE), and R-squared (R²).
Results: The model achieved an overall accuracy of 97.5% for binary classifications of scars. McNemar's test confirmed no significant differences between predicted and actual outcomes. For continuous outcomes, the MAE was 0.65, with an MSE of 0.9 and RMSE of 0.95, indicating moderate accuracy. Vascularity predictions yielded an R² of 0.234, whereas height and width showed stronger correlations with R² values of 0.857 and 0.956, respectively. Statistically significant differences in paired t-tests were observed for pigmentation (t = 4.356, p = 9.319e-05) and width (t = 2.896, p = 0.0062).
Conclusion: The Smart Image Analysis ChatGPT model demonstrates excellent predictive accuracy in binary scar classification and provides valuable insights for scar characteristics. Further refinement is necessary for improving predictions of dynamic features such as vascularity.
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http://dx.doi.org/10.1016/j.bjps.2025.03.021 | DOI Listing |
Am J Emerg Med
September 2025
University of Toronto, Rotman School of Management, Canada.
Study Objective: Accurately predicting which Emergency Department (ED) patients are at high risk of leaving without being seen (LWBS) could enable targeted interventions aimed at reducing LWBS rates. Machine Learning (ML) models that dynamically update these risk predictions as patients experience more time waiting were developed and validated, in order to improve the prediction accuracy and correctly identify more patients who LWBS.
Methods: The study was deemed quality improvement by the institutional review board, and collected all patient visits to the ED of a large academic medical campus over 24 months.
Clin Transl Gastroenterol
September 2025
Department of Internal Medicine, School of Medicine, University of Medicine and Pharmacy at Ho Cho Minh City, Vietnam.
Background: Severe acute pancreatitis (SAP) is a life-threatening condition requiring early risk stratification. While the Bedside Index for Severity in Acute Pancreatitis (BISAP) is widely used, its reliance on complex parameters limits its applicability in resource-constrained settings. This study introduces a decision tree model based on Classification and Regression Tree (CART) analysis, utilizing Neutrophil-to-Lymphocyte Ratio (NLR) and C-reactive Protein (CRP), as a simpler alternative for early SAP prediction.
View Article and Find Full Text PDFPLoS One
September 2025
Institute of Computational Science and Technology, Guangzhou University, Guangzhou, China.
MicroRNAs (miRNAs) are critical regulators of gene expression in cancer biology, yet their spatial dynamics within tumor microenvironments (TMEs) remain underexplored due to technical limitations in current spatial transcriptomics (ST) technologies. To address this gap, we present STmiR, a novel XGBoost-based framework for spatially resolved miRNA activity prediction. STmiR integrates bulk RNA-seq data (TCGA and CCLE) with spatial transcriptomics profiles to model nonlinear miRNA-mRNA interactions, achieving high predictive accuracy (Spearman's ρ > 0.
View Article and Find Full Text PDFPLoS One
September 2025
School of Electrical and Information Engineering, Hunan Institute of Technology, Hengyang, Hunan, China.
Knowledge tracing can reveal students' level of knowledge in relation to their learning performance. Recently, plenty of machine learning algorithms have been proposed to exploit to implement knowledge tracing and have achieved promising outcomes. However, most of the previous approaches were unable to cope with long sequence time-series prediction, which is more valuable than short sequence prediction that is extensively utilized in current knowledge-tracing studies.
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