Background and objective: Classifying people according to their health profile is crucial in order to propose appropriate treatment. However, the medical diagnosis is sometimes not available. This is for example the case in health insurance, making the proposal of custom prevention plans difficult. When this is the case, an unsupervised clustering method is needed. This article aims to compare three different methods by adapting some text mining methods to the field of health insurance. Also, a new clustering stability measure is proposed in order to compare the stability of the tested processes. Methods : Nonnegative Matrix Factorization, the word2vec method, and marginalized Stacked Denoising Autoencoders are used and compared in order to...
A number of approaches have been proposed in literature to collect and classify patient related info...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
Every day insurance companies collect an enormous quantity of text data from multiple sources. By ex...
On paper, prevention appears to be a good complement to health insurance. However, its implementatio...
Electronic Healthcare records contain large volumes of unstructured data in different forms. Free te...
Biomedical data exists in the form of journal articles, research studies, electronic health records,...
Medical data is often presented as free text in the form of medical reports. Such documents contain ...
The accumulating amounts of data are making traditional analysis methods impractical. Novel tools em...
Electronic health records are invaluable for medical research, but much of the information is record...
MOTIVATION: It has been proposed that clustering clinical markers, such as blood test results, can b...
The huge amounts of data generated by media sensors in health monitoring systems, by medical diagnos...
Purpose Increasingly, patient information is stored in electronic medical records, which could be re...
There are large quantities of information about patients and their medical conditions. The discovery...
It has been proposed that clustering clinical markers, such as blood test results, can be used to st...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
A number of approaches have been proposed in literature to collect and classify patient related info...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
Every day insurance companies collect an enormous quantity of text data from multiple sources. By ex...
On paper, prevention appears to be a good complement to health insurance. However, its implementatio...
Electronic Healthcare records contain large volumes of unstructured data in different forms. Free te...
Biomedical data exists in the form of journal articles, research studies, electronic health records,...
Medical data is often presented as free text in the form of medical reports. Such documents contain ...
The accumulating amounts of data are making traditional analysis methods impractical. Novel tools em...
Electronic health records are invaluable for medical research, but much of the information is record...
MOTIVATION: It has been proposed that clustering clinical markers, such as blood test results, can b...
The huge amounts of data generated by media sensors in health monitoring systems, by medical diagnos...
Purpose Increasingly, patient information is stored in electronic medical records, which could be re...
There are large quantities of information about patients and their medical conditions. The discovery...
It has been proposed that clustering clinical markers, such as blood test results, can be used to st...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
A number of approaches have been proposed in literature to collect and classify patient related info...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
Every day insurance companies collect an enormous quantity of text data from multiple sources. By ex...