Literature DB >> 17938773

Using T3, an improved decision tree classifier, for mining stroke-related medical data.

C Tjortjis1, M Saraee, B Theodoulidis, J A Keane.   

Abstract

OBJECTIVES: Medical data are a valuable resource from which novel and potentially useful knowledge can be discovered by using data mining. Data mining can assist and support medical decision making and enhance clinical management and investigative research. The objective of this work is to propose a method for building accurate descriptive and predictive models based on classification of past medical data. We also aim to compare this method with other well established data mining methods and identify strengths and weaknesses.
METHOD: We propose T3, a decision tree classifier which builds predictive models based on known classes, by allowing for a certain amount of misclassification error in training in order to achieve better descriptive and predictive accuracy. We then experiment with a real medical data set on stroke, and various subsets, in order to identify strengths and weaknesses. We also compare performance with a very successful and well established decision tree classifier.
RESULTS: T3 demonstrated impressive performance when predicting unseen cases of stroke resulting in as little as 0.4% classification error while the state of the art decision tree classifier resulted in 33.6% classification error respectively.
CONCLUSIONS: This paper presents and evaluates T3, a classification algorithm that builds decision trees of depth at most three, and results in high accuracy whilst keeping the tree size reasonably small. T3 demonstrates strong descriptive and predictive power without compromising simplicity and clarity. We evaluate T3 based on real stroke register data and compare it with C4.5, a well-known classification algorithm, showing that T3 produces significantly more accurate and readable classifiers.

Entities:  

Mesh:

Year:  2007        PMID: 17938773     DOI: 10.1160/me0317

Source DB:  PubMed          Journal:  Methods Inf Med        ISSN: 0026-1270            Impact factor:   2.176


  4 in total

1.  Prediction of Patient's Adherence to the Post-Intubation Tracheal Stenosis Follow-up Plan in Iran: Application of two Data Mining Techniques.

Authors:  Behrooz Farzanegan; Roya Farzanegan; Mohammad Behgam Shadmehr; Seyedamirmohammad Lajevardi; Sharareh R Niakan Kalhori
Journal:  Tanaffos       Date:  2020-12

2.  Prediction and control of stroke by data mining.

Authors:  Leila Amini; Reza Azarpazhouh; Mohammad Taghi Farzadfar; Sayed Ali Mousavi; Farahnaz Jazaieri; Fariborz Khorvash; Rasul Norouzi; Nafiseh Toghianfar
Journal:  Int J Prev Med       Date:  2013-05

3.  A Bayesian Network Model for Predicting Post-stroke Outcomes With Available Risk Factors.

Authors:  Eunjeong Park; Hyuk-Jae Chang; Hyo Suk Nam
Journal:  Front Neurol       Date:  2018-09-07       Impact factor: 4.003

4.  A systematic review of machine learning models for predicting outcomes of stroke with structured data.

Authors:  Wenjuan Wang; Martin Kiik; Niels Peek; Vasa Curcin; Iain J Marshall; Anthony G Rudd; Yanzhong Wang; Abdel Douiri; Charles D Wolfe; Benjamin Bray
Journal:  PLoS One       Date:  2020-06-12       Impact factor: 3.240

  4 in total

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