PREDICTING THE OUTCOMES OF TRAUMATIC BRAIN INJURY USING ACCURATE AND DYNAMIC PREDICTIVE MODEL

Predictive models have been used widely to predict the diseases outcomes in health sector. These predictive models are emerged with new information and communication technologies. Traumatic brain injury has recognizes as a serious and crucial health problem all over the world. In order to predict br...

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Veröffentlicht in:Journal of Theoretical and Applied Information Technology 2016-11, Vol.93 (2), p.561-561
Hauptverfasser: Alanazi, Hamdan O, Abdullah, Abdul Hanan, Qureshi, Kashif Naseer, Larbani, Moussa, Al Jumah, Mohammed
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container_issue 2
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container_title Journal of Theoretical and Applied Information Technology
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creator Alanazi, Hamdan O
Abdullah, Abdul Hanan
Qureshi, Kashif Naseer
Larbani, Moussa
Al Jumah, Mohammed
description Predictive models have been used widely to predict the diseases outcomes in health sector. These predictive models are emerged with new information and communication technologies. Traumatic brain injury has recognizes as a serious and crucial health problem all over the world. In order to predict brain injuries outcomes, the predictive models are still suffered with predictive performance. In this paper, we propose a new predictive model and traumatic brain injury predictive model to improve the predictive performance to classifying the disease predictions into different categories. These proposed predictive models support to develop the traumatic brain injury predictive model. A primary dataset is constructed which is based on approved set of features by the neurologist. The results of proposed model is indicated that model has achieved the best average ranking in terms of accuracy, sensitivity and specificity.
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source EZB-FREE-00999 freely available EZB journals
subjects Classification
Diseases
Head injuries
Health
Information technology
Mathematical models
Performance prediction
Predictions
title PREDICTING THE OUTCOMES OF TRAUMATIC BRAIN INJURY USING ACCURATE AND DYNAMIC PREDICTIVE MODEL
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