A multiple measurements case-based reasoning method for predicting recurrent status of liver cancer patients
Journal
Computers in Industry
Journal Volume
69
Pages
12
Date Issued
2015-05-01
Author(s)
Ping, Xiao-Ou
Tseng, Yi-Ju
Lin, Yan-Po
Chiu, Hsiang-Ju
Abstract
In general, the studies introducing the medical predictive models which frequently handle time series data by direct matching between pairs of features within sequences during calculation of similarity may have following limitations: (1) direct matching may not be a suitable matching because these paired cases by a fixed order may not be with the most similar temporal information, and (2) when two patients have different numbers of multiple cases, some cases may be ignored. For example, one patient with four cases and another one with five cases, only first four cases of these two patients are paired and the left one case may be ignored. In this paper, in order to dynamically determine matching pairs among cases and pair all cases between two patients, we propose a multiple measurements case-based reasoning (MMCBR) to be used for building liver cancer recurrence predictive models. MMCBR and single measurement case-based reasoning (SingleCBR) are evaluated and compared. According to experiment results in this study, the performance of MMCBR models is better than that of SingleCBR models. Multiple measurements accumulated during a period of time do have benefits for building predictive models with improved performance based on this proposed MMCBR method. ? 2015 Elsevier B.V. All rights reserved.
SDGs
Other Subjects
Diseases; Forecasting; Predictive analytics; Calculation of similarities; Liver cancers; Multiple measurements; Performance based; Predictive models; Recurrence; Temporal information; Time-series data; Case based reasoning
Publisher
Elsevier
Type
journal article
