Development and Validation of SXI++ LNM Algorithm for Sepsis Prediction
- URL: http://arxiv.org/abs/2505.22840v1
- Date: Wed, 28 May 2025 20:20:35 GMT
- Title: Development and Validation of SXI++ LNM Algorithm for Sepsis Prediction
- Authors: Dharambir Mahto, Prashant Yadav, Mahesh Banavar, Jim Keany, Alan T Joseph, Srinivas Kilambi,
- Abstract summary: Sepsis is a life-threatening condition affecting over 48.9 million people globally and causing 11 million deaths annually.<n>The SXI++ LNM is a machine learning scoring system that refines sepsis prediction by leveraging multiple algorithms and deep neural networks.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Sepsis is a life-threatening condition affecting over 48.9 million people globally and causing 11 million deaths annually. Despite medical advancements, predicting sepsis remains a challenge due to non-specific symptoms and complex pathophysiology. The SXI++ LNM is a machine learning scoring system that refines sepsis prediction by leveraging multiple algorithms and deep neural networks. This study aims to improve robustness in clinical applications and evaluates the predictive performance of the SXI++ LNM for sepsis prediction. The model, utilizing a deep neural network, was trained and tested using multiple scenarios with different dataset distributions. The model's performance was assessed against unseen test data, and accuracy, precision, and area under the curve (AUC) were calculated. THE SXI++ LNM outperformed the state of the art in three use cases, achieving an AUC of 0.99 (95% CI: 0.98-1.00). The model demonstrated a precision of 99.9% (95% CI: 99.8-100.0) and an accuracy of 99.99% (95% CI: 99.98-100.0), maintaining high reliability.
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