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1.
Methods Inf Med ; 53(2): 121-36, 2014.
Article in English | MEDLINE | ID: mdl-24573195

ABSTRACT

BACKGROUND: Heart failure (HF) is affecting millions of people every year and it is characterized by impaired ventricular performance, exercise intolerance and shortened life expectancy. Despite significant advancements in drug therapy, mortality of the disease remains excessively high, as heart transplant remains the gold standard treatment for end-stage HF when no contraindications subsist. Traditionally, implanted Ventricular Assist Devices (VADs) have been employed in order to provide circulatory support to patients who cannot survive the waiting time to transplantation, reducing the workload imposed on the heart. In many cases that process could recover its contractility performance. OBJECTIVES: The SensorART platform focuses on the management and remote treatment of patients suffering from HF. It provides an interoperable, extendable and VAD-independent solution, which incorporates various hardware and software components in a holistic approach, in order to improve the quality of the patients' treatment and the workflow of the specialists. This paper focuses on the description and analysis of Specialist's Decision Support System (SDSS), an innovative component of the SensorART platform. METHODS: The SDSS is a Web-based tool that assists specialists on designing the therapy plan for their patients before and after VAD implantation, analyzing patients' data, extracting new knowledge, and making informative decisions. RESULTS: SDSS offers support to medical and VAD experts through the different phases of VAD therapy, incorporating several tools covering all related fields; Statistics, Association Rules, Monitoring, Treatment, Weaning, Speed and Suction Detection. CONCLUSIONS: SDSS and its modules have been tested in a number of patients and the results are encouraging.


Subject(s)
Decision Support Techniques , Heart Failure/therapy , Heart-Assist Devices , Monitoring, Physiologic , Postoperative Care , Remote Consultation , Software , Therapy, Computer-Assisted , Expert Systems , Humans , Internet , Patient Care Planning , Quality Improvement , Workflow
2.
Artif Intell Med ; 37(1): 55-64, 2006 May.
Article in English | MEDLINE | ID: mdl-16377160

ABSTRACT

OBJECTIVE: This paper proposes a novel method for the extraction and classification of individual motor unit action potentials (MUAPs) from intramuscular electromyographic signals. METHODOLOGY: The proposed method automatically detects the number of template MUAP clusters and classifies them into normal, neuropathic or myopathic. It consists of three steps: (i) preprocessing of electromyogram (EMG) recordings, (ii) MUAP detection and clustering and (iii) MUAP classification. RESULTS: The approach has been validated using a dataset of EMG recordings and an annotated collection of MUAPs. The correct identification rate for MUAP clustering is 93, 95 and 92% for normal, myopathic and neuropathic, respectively. Ninety-one percent of the superimposed MUAPs were correctly identified. The obtained accuracy for MUAP classification is about 86%. CONCLUSION: The proposed method, apart from efficient EMG decomposition addresses automatic MUAP classification to neuropathic, myopathic or normal classes directly from raw EMG signals.


Subject(s)
Action Potentials , Diagnosis, Computer-Assisted , Electromyography/methods , Motor Neuron Disease/diagnosis , Muscle, Skeletal/physiology , Signal Processing, Computer-Assisted , Algorithms , Cluster Analysis , Humans , Models, Statistical , Motor Neuron Disease/classification , Motor Neurons/physiology , Muscle, Skeletal/innervation , Pattern Recognition, Automated , Reproducibility of Results
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