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Journal ArticleDOI

Healthcare Data Mining: Predicting Hospital Length of Stay PHLOS

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TLDR
This study provides insight into the underlying factors that influence hospital length of stay, using a multi-tiered data mining approach to form training sets and identifying patients who need aggressive or moderate early interventions to prevent prolonged stays.
Abstract
A model to predict the Length of Stay LOS for hospitalized patients can be an effective tool for measuring the consumption of hospital resources Such a model will enable early interventions to prevent complications and prolonged LOS and also enable more efficient utilization of manpower and facilities in hospitals In this paper, the authors propose an approach for Predicting Hospital Length of Stay PHLOS using a multi-tiered data mining approach In their aproach, the authors form training sets, using groups of similar claims identified by k-means clustering and perfom classification using ten different classifiers The authors provide a combined measure of performance to statistically evaluate and rank the classifiers for different levels of clustering They consistently found that using clustering as a precursor to form the training set gives better prediction results as compared to non-clustering based training sets The authors have also found the accuracies to be consistently higher than some reported in the current literature for predicting individual patient LOS Binning the LOS to three groups of short, medium and long stays, their method identifies patients who need aggressive or moderate early interventions to prevent prolonged stays The classification techniques used in this study are interpretable, enabling them to examine the details of the classification rules learned from the data As a result, this study provides insight into the underlying factors that influence hospital length of stay They also examine the authors' prediction results for three randomly selected conditions with domain expert insights

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Citations
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Patient length of stay and mortality prediction: A survey

TL;DR: A classification and evaluation is provided for the analytical methods of the length of stay and mortality prediction associated with a grouping of relevant research papers published in the years 1984 to 2016 related to the domain of survival analysis.
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Particle Swarm Optimization over Back Propagation Neural Network for Length of Stay Prediction

TL;DR: A robust stochastic optimization technique called PSO is compared with back propagation for training and the algorithms were evaluated based on error convergence, sensitivity, specificity, positive precision value and accuracy.
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Towards a Mixed Approach to Extract Biomedical Terms from Text Corpus

TL;DR: Experimental results show that an appropriate harmonic mean of C-value associated to keyword extraction measures offers better precision, both for single-word and multi-words term extraction.
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B-dids: Mining anomalies in a Big-distributed Intrusion Detection System

TL;DR: The architecture of a Big-distributed Intrusion Detection System (B-dIDS) to discover multi-pronged attacks which are anomalies existing across multiple subnets in a distributed network.
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Improving Prediction Accuracy of “Central Line-Associated Blood Stream Infections” Using Data Mining Models

TL;DR: Six data mining methods implemented using cross industry standard process for data mining to predict central line-associated blood stream infections can be successfully predicted using AdaBoost method with an accuracy up to 89.7% and will help in implementing effective clinical surveillance programs for infection control.
References
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