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Deep Learning – Driven Sepsis Risk Forecasting with Composer –CNN – LSTM Integration

R. Banupriya, D. Vimal Kumar, S. P. Santhoshkumar, G. Ganesh Kumar, Viknesh Kumar. D, R. Janani

202520 citationsDOI

Abstract

This study proposes a novel deep learning-based sepsis prediction framework, COMPOSER, which combines Convolutional Neural Networks (CNN) and Long Short-Term Memory (LSTM) units for more effective early and accurate detection of sepsis. This model was trained and validated on the MIMIC-III dataset, leveraging an optimized CNN-LSTM architecture, including a modified convolutional depth and a temporal modeling granularity, to maximize predictive accuracy. After tuning the number of CNN layers and temporal sequencing in the LSTM, the model reached the best classification metrics of a 91.1% accuracy, AUROC of 0.94, AUPRC of 0.89, precision of 87%, recall of 84%, and F1-score of 84%. These results show our approach to be a marked improvement to baseline models like MEWS, Logistic Regression, and standalone LSTM, especially in improving handling of class imbalance and false alarm count. The COMPOSER-enhanced CNN-LSTM variant did even better on interpretability and clinical applicability, while maintaining high deployment readiness and 4–6-hour early detection window, a factor crucial for proactive clinical intervention. The introduced framework addresses this concern by stacking several convolutional filters to have a richer perception of the local trends. LSTM gating mechanisms were deliberately crafted to better process long-term dependencies. The resulting COMPOSER architecture therefore represents a powerful, interpretable, high-performing clinical decision support system for early detection of sepsis in ICU environments.

Topics & Concepts

InterpretabilityArtificial intelligenceDeep learningComputer scienceConvolutional neural networkMachine learningPipeline (software)Precision and recallProcess (computing)Artificial neural networkKey (lock)Identification (biology)Software deploymentFeature extractionClinical decision support systemRecallAnomaly detectionAbstractionPattern recognition (psychology)Recurrent neural networkFalse alarmData miningALARMPredictive modellingData Mining and Machine Learning ApplicationsForecasting Techniques and Applications
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