A genetic fuzzy system for unstable angina risk assessment

Author:

Dong Wei,Huang Zhengxing,Ji Lei,Duan Huilong

Abstract

Abstract Background Unstable Angina (UA) is widely accepted as a critical phase of coronary heart disease with patients exhibiting widely varying risks. Early risk assessment of UA is at the center of the management program, which allows physicians to categorize patients according to the clinical characteristics and stratification of risk and different prognosis. Although many prognostic models have been widely used for UA risk assessment in clinical practice, a number of studies have highlighted possible shortcomings. One serious drawback is that existing models lack the ability to deal with the intrinsic uncertainty about the variables utilized. Methods In order to help physicians refine knowledge for the stratification of UA risk with respect to vagueness in information, this paper develops an intelligent system combining genetic algorithm and fuzzy association rule mining. In detail, it models the input information’s vagueness through fuzzy sets, and then applies a genetic fuzzy system on the acquired fuzzy sets to extract the fuzzy rule set for the problem of UA risk assessment. Results The proposed system is evaluated using a real data-set collected from the cardiology department of a Chinese hospital, which consists of 54 patient cases. 9 numerical patient features and 17 categorical patient features that appear in the data-set are selected in the experiments. The proposed system made the same decisions as the physician in 46 (out of a total of 54) tested cases (85.2%). Conclusions By comparing the results that are obtained through the proposed system with those resulting from the physician’s decision, it has been found that the developed model is highly reflective of reality. The proposed system could be used for educational purposes, and with further improvements, could assist and guide young physicians in their daily work.

Publisher

Springer Science and Business Media LLC

Subject

Health Informatics,Health Policy,Computer Science Applications

Reference17 articles.

1. Yeghiazarians Y, Braunstein JB, Askari A, Stone PH: Unstable angina pectoris. N Engl J Hum Serv. 2000, 342 (2): 101-114.

2. Graham CA, Tsay SX, Rotheray KR, Rainer TH: Validation of the TIMI risk score in Chinese patients presenting to the emergency department with chest pain. Int J Cardiol. 2013, 168: 597-598. 10.1016/j.ijcard.2013.01.233.

3. 2012 Writing Committee Members, Jneid H, Anderson JL, Wright RS, Adams CD, Bridges CR, Casey DE Jr, Ettinger SM, Fesmire FM, Ganiats TG, Lincoff AM, Peterson ED, Philippides GJ, Theroux P, Wenger NK, Zidar JP, Anderson JL: 2012 ACCF/AHA focused update of the guideline for the management of patients with Unstable Angina/Non-ST-Elevation myocardial infarction (updating the 2007 guideline and replacing the 2011 focused update). Circulation. 2012, 126 (7): 875-910.

4. Kozieradzka A, Kamiǹski KA, Maciorkowska D, Olszewska M, Dobrzycki S, Nowak K, Kralisz P, Prokopczuk P, Musial WJ: GRACE, TIMI, Zwolle and CADILLAC risk scores - do they predict 5-year outcomes after ST-elevation myocardial infarction treated invasively?. Int J Cardiol. 2011, 148: 70-75. 10.1016/j.ijcard.2009.10.026.

5. Boersma E, Pieper KS, Steyerberg EW, Wilcox RG, Chang WC, Lee KL, Akkerhuis KM, Harrington RA, Deckers JW, Armstrong PW, Lincoff AM, Califf RM, Topol EJ, Simoons ML: For the PURSUIT Investigators. Predictors of outcome in patients with acute coronary syndromes without persistent ST-segment elevation. Results from an international trial of 9461 patients. Circulation. 2000, 101: 2557-2567. 10.1161/01.CIR.101.22.2557.

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