DocumentCode :
66510
Title :
Multiple-Time-Series Clinical Data Processing for Classification With Merging Algorithm and Statistical Measures
Author :
Yi-Ju Tseng ; Xiao-Ou Ping ; Ja-Der Liang ; Pei-Ming Yang ; Guan-Tarn Huang ; Feipei Lai
Author_Institution :
Children´s Hosp. Inf. Program, Harvard-MIT, Boston, MA, USA
Volume :
19
Issue :
3
fYear :
2015
fDate :
May-15
Firstpage :
1036
Lastpage :
1043
Abstract :
A description of patient conditions should consist of the changes in and combination of clinical measures. Traditional data-processing method and classification algorithms might cause clinical information to disappear and reduce prediction performance. To improve the accuracy of clinical-outcome prediction by using multiple measurements, a new multiple-time-series data-processing algorithm with period merging is proposed. Clinical data from 83 hepatocellular carcinoma (HCC) patients were used in this research. Their clinical reports from a defined period were merged using the proposed merging algorithm, and statistical measures were also calculated. After data processing, multiple measurements support vector machine (MMSVM) with radial basis function (RBF) kernels was used as a classification method to predict HCC recurrence. A multiple measurements random forest regression (MMRF) was also used as an additional evaluation/classification method. To evaluate the data-merging algorithm, the performance of prediction using processed multiple measurements was compared to prediction using single measurements. The results of recurrence prediction by MMSVM with RBF using multiple measurements and a period of 120 days (accuracy 0.771, balanced accuracy 0.603) were optimal, and their superiority to the results obtained using single measurements was statistically significant (accuracy 0.626, balanced accuracy 0.459, P <; 0.01). In the cases of MMRF, the prediction results obtained after applying the proposed merging algorithm were also better than single-measurement results (P <; 0.05). The results show that the performance of HCC-recurrence prediction was significantly improved when the proposed data-processing algorithm was used, and that multiple measurements could be of greater value than single
Keywords :
biomedical measurement; data mining; medical signal processing; signal classification; statistical analysis; support vector machines; time series; HCC recurrence; MMSVM; classification algorithms; clinical-outcome prediction; hepatocellular carcinoma patients; merging algorithm; multiple measurements; multiple measurements random forest regression; multiple measurements support vector machine; multiple-time-series clinical data processing; patient conditions; radial basis function kernels; single measurement results; statistical measures; time 120 d; traditional data-processing method; Accuracy; Biomedical measurement; Classification algorithms; Merging; Prediction algorithms; Predictive models; Support vector machines; Data mining; data processing; multiple measurements; support vector machine (SVM); time-series analysis;
fLanguage :
English
Journal_Title :
Biomedical and Health Informatics, IEEE Journal of
Publisher :
ieee
ISSN :
2168-2194
Type :
jour
DOI :
10.1109/JBHI.2014.2357719
Filename :
6897922
Link To Document :
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