Khalida Douibi, Nesma Settouti, Mohammed Amine Chikh, Jesse Read, Mohamed Malik Benabid
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An analysis of ambulatory blood pressure monitoring using multi-label classification.
Ambulatory blood pressure monitoring (ABPM) involves measuring blood pressure by means of a tensiometer carried by the patient for a duration of 24 h, it currently occupies a central place in the diagnosis and follow-up of hypertensive patients, it provides crucial information which allows to make a specific diagnosis and adapt therapeutic attitude accordingly. The traditional analysis process suffers from different problems: it requires a lot of time and expertise, and several calculations should be performed manually by the expert, who is generally very busy. In this work, we attempt to improve the analysis of ABPM data using multi-label classification methods, where a record is associated with more than one label (class) at the same time. Seven algorithms are experimentally compared on a new multi-label ABPM-dataset. Experiments are conducted on 270 hypertensive patient records characterized by 40 attributes and associated with six labels. Results show that the multi-label modeling of ABPM data helps to investigate label dependencies and provide interesting insights, which can be integrated into the ABPM devices to dispense automatically detailed reports with possible future complications.
期刊介绍:
Australasian Physical & Engineering Sciences in Medicine (APESM) is a multidisciplinary forum for information and research on the application of physics and engineering to medicine and human physiology. APESM covers a broad range of topics that include but is not limited to:
- Medical physics in radiotherapy
- Medical physics in diagnostic radiology
- Medical physics in nuclear medicine
- Mathematical modelling applied to medicine and human biology
- Clinical biomedical engineering
- Feature extraction, classification of EEG, ECG, EMG, EOG, and other biomedical signals;
- Medical imaging - contributions to new and improved methods;
- Modelling of physiological systems
- Image processing to extract information from images, e.g. fMRI, CT, etc.;
- Biomechanics, especially with applications to orthopaedics.
- Nanotechnology in medicine
APESM offers original reviews, scientific papers, scientific notes, technical papers, educational notes, book reviews and letters to the editor.
APESM is the journal of the Australasian College of Physical Scientists and Engineers in Medicine, and also the official journal of the College of Biomedical Engineers, Engineers Australia and the Asia-Oceania Federation of Organizations for Medical Physics.