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Published byOswin Brooks Modified over 9 years ago
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Tessy Badriyah Healthy Computing, 1 nd June 2011 Aim : to contribute to the building of effective and efficient methods to predict clinical outcome that can be constructed from routinely collected data
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Dataset Model was built from Biochemistry and Haematology Outcome Model (BHOM) dataset, during 12-month study period => 17,417 patients. The fields are : death - at discharge - F=alive, T =dead (class attribute), age at admission, mode of admission (mostly emergency, but some elective), gender, haemoglobin, white cell count, urea, serum sodium, serum potassium, creatinine, urea / creatinine Statistical Analysis The statistical analysis to asses the overall performance of the model are discrimination (area under ROC curve or c-index) and calibration (chi-test) Design Experiment We conducted our experiment using Logistic Regression as standard method (‘gold standard’) in the Health Care data and several methods in machine learning techniques (Decision Trees, Neural Networks, K-Nearest Neighbour,). We used 10-fold cross validation method and the process was repeated 10 times to avoid bias during the formation of the cross validation data splits. Methodology
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Both Logistic regression and Machine Learning methods have shown a good results Machine Learning methods is worth to looking at to predict clinical outcome In another experiment, we were increasing the number of non-survivors in the dataset to test the hypothesis that the discrimination can be improved when the proportion of non-survivors has been increased => hypothesis proved. Further investigation and model development to predict another clinical outcome (e.g. readmission rates) which has different types of target data with previous clinical outcome.
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