Title :
Mining textual data from primary healthcare records: Automatic identification of patient phenotype cohorts
Author :
Shang-Ming Zhou ; Rahman, Md Arifur ; Atkinson, Malcolm ; Brophy, Sinead
Author_Institution :
Public Health Inf. Group, Swansea Univ., Swansea, UK
Abstract :
Due to advances of the "omics" technologies, rich sources of clinical, biomedical, contextual, and environmental data about each patient have been available in medical and health sciences. However, an enormous amount of electronic health records is actually generated as textual data, such as descriptive terms/concepts. No doubt, efficiently harnessing these valuable textual data would allow doctors and nurses to identify the most appropriate treatments and the predicted outcomes for a given patient in real time. We used textual data to identify patient phenotypes from UK primary care records that were managed by Read codes (a clinical classification system). The fine granularity level of Read codes leads to a huge number of clinical terms to be handled. Unfortunately, traditional medical statistics methods have struggled to process this sort of data effectively. In this paper, we described how the problem of patient phenotype identification can be transformed into document classification task, a text mining scheme is addressed to integrate feature ranking methods and genetic algorithm to identify the most parsimonious subset of features that still holds the capacity of characterizing the distinction of patient phenotypes. The experimental results have demonstrated that compact feature sets with 2 or 3 important terms describing clinical events were effectively identified from 16852 Read codes while their classification accuracy remained high level of agreements with specialists from secondary care in classifying testing samples.
Keywords :
data mining; genetic algorithms; medical information systems; pattern classification; statistical analysis; text analysis; UK primary care records; classification accuracy; doctors; document classification task; electronic health records; environmental data; feature ranking methods; genetic algorithm; health sciences; medical sciences; medical statistics methods; nurses; omics technologies; parsimonious features subset; patient phenotype cohorts; patient phenotypes; primary healthcare records; read codes; secondary care; text mining scheme; textual data mining; Diseases; Educational institutions; Genetic algorithms; Medical diagnostic imaging; Testing; Training;
Conference_Titel :
Neural Networks (IJCNN), 2014 International Joint Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4799-6627-1
DOI :
10.1109/IJCNN.2014.6889494