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1.
Stud Health Technol Inform ; 177: 71-5, 2012.
Article in English | MEDLINE | ID: mdl-22942033

ABSTRACT

NovaMedTech is an initiative funded from EU structural funds for supporting new medical technologies for personalized health care. It aims at bringing these technologies into clinical use and to the health care market. The program has participants from health care, industry and academia in East middle Sweden. The first three year period of the program was successful in terms of product concepts tried clinically, and number of products brought to a commercialization phase. Further, the program has led to a large number of scientific publications. Among projects supported, we can mention: Intelligent sensor networks; A digital pen to collect medical information about health status from patients; A web-based intelligent stethoscope; Methodologies to measure local blood flow and nutrition using optical techniques; Blood flow assessment from ankle pressure measurements; Technologies for pressure ulcer prevention; An IR thermometer for improved accuracy; A technique that identifies individuals prone to commit suicide among depressed patients; Detection of infectious disease using an electronic nose; Identification of the lactate threshold from breath; Obesity measurements using special software and MR camera; and An optical probe guided tumor resection. During the present three years period emphasis will be on entrepreneurial activities supporting the commercialization and bringing products to the market.


Subject(s)
Biomedical Technology/organization & administration , Delivery of Health Care/organization & administration , Government Programs , Monitoring, Ambulatory/methods , Precision Medicine/methods , Telemedicine/organization & administration , Europe
2.
Am J Vet Res ; 70(5): 604-13, 2009 May.
Article in English | MEDLINE | ID: mdl-19405899

ABSTRACT

OBJECTIVE: To investigate use of signal analysis of heart sounds and murmurs in assessing severity of mitral valve regurgitation (mitral regurgitation [MR]) in dogs with myxomatous mitral valve disease (MMVD). ANIMALS: 77 client-owned dogs. PROCEDURES: Cardiac sounds were recorded from dogs evaluated by use of auscultatory and echocardiographic classification systems. Signal analysis techniques were developed to extract 7 sound variables (first frequency peak, murmur energy ratio, murmur duration > 200 Hz, sample entropy and first minimum of the auto mutual information function of the murmurs, and energy ratios of the first heart sound [S1] and second heart sound [S2]). RESULTS: Significant associations were detected between severity of MR and all sound variables, except the energy ratio of S1. An increase in severity of MR resulted in greater contribution of higher frequencies, increased signal irregularity, and decreased energy ratio of S2. The optimal combination of variables for distinguishing dogs with high-intensity murmurs from other dogs was energy ratio of S2 and murmur duration > 200 Hz (sensitivity, 79%; specificity, 71%) by use of the auscultatory classification. By use of the echocardiographic classification, corresponding variables were auto mutual information, first frequency peak, and energy ratio of S2 (sensitivity, 88%; specificity, 82%). CONCLUSIONS AND CLINICAL RELEVANCE: Most of the investigated sound variables were significantly associated with severity of MR, which indicated a powerful diagnostic potential for monitoring MMVD. Signal analysis techniques could be valuable for clinicians when performing risk assessment or determining whether special care and more extensive examinations are required.


Subject(s)
Dog Diseases/diagnosis , Heart Murmurs/veterinary , Heart Sounds/physiology , Mitral Valve Insufficiency/veterinary , Animals , Discriminant Analysis , Dogs , Echocardiography/veterinary , Female , Heart Murmurs/diagnosis , Male , Mitral Valve/pathology , Mitral Valve Insufficiency/diagnosis , Regression Analysis , Sensitivity and Specificity , Severity of Illness Index
3.
Article in English | MEDLINE | ID: mdl-18003315

ABSTRACT

In this study we aim to explain the behavior of textile electrodes due to their construction techniques. Three textile electrodes were tested for electrode impedance and polarization potentials. The multifilament yarn (A) is favorable for its low thread resistance. Although, when knitted into electrodes, the staple fiber yarn (B) showed a comparable and satisfiable electrode impedance. The multifilament yarn had however a lower polarization potential drift then the other specimens. The monofilament yarn (C) had high electrode impedance and varying mean polarization potentials due to its conductive material and small contact area with the skin.


Subject(s)
Clothing , Electrodes , Monitoring, Ambulatory/instrumentation , Textiles , Electric Conductivity , Equipment Design , Equipment Failure Analysis , Materials Testing , Monitoring, Ambulatory/methods
4.
Article in English | MEDLINE | ID: mdl-18002364

ABSTRACT

Mild sclerotic thickening of the aortic valve affects 25% of the population, and the condition causes aortic valve stenosis (AS) in 2% of adults above 65 years. Echocardiography is today the clinical standard for assessing AS. However, a cost effective and uncomplicated technique that can be used for decision support in the primary health care would be of great value. In this study, recorded phonocardiographic signals were analyzed using the first local minimum of the auto mutual information (AMI) function. The AMI method measures the complexity in the sound signal, which is related to the amount of turbulence in the blood flow and thus to the severity of the stenosis. Two previously developed phonocardiographic methods for assessing AS severity were used for comparison, the murmur energy ratio and the sound spectral averaging technique. Twenty-nine patients with suspected AS were examined with Doppler echocardiography. The aortic jet velocity was used as a reference of AS severity, and it was found to correlate with the AMI method, the murmur energy ratio and the sound spectral averaging technique with the correlation coefficient R = 0.82, R = 0.73 and R = 0.76, respectively.


Subject(s)
Aortic Valve Stenosis/diagnosis , Aortic Valve Stenosis/pathology , Heart Murmurs/diagnosis , Phonocardiography/instrumentation , Signal Processing, Computer-Assisted , Adolescent , Adult , Aged , Aged, 80 and over , Aortic Valve , Blood Flow Velocity , Cost-Benefit Analysis , Female , Heart Auscultation , Heart Murmurs/pathology , Humans , Male , Middle Aged , Phonocardiography/methods
5.
Med Biol Eng Comput ; 45(12): 1251-7, 2007 Dec.
Article in English | MEDLINE | ID: mdl-17929069

ABSTRACT

Clothing with conductive textiles for health care applications has in the last decade been of an upcoming research interest. An advantage with the technique is its suitability in distributed and home health care. The present study investigates the electrical properties of conductive yarns and textile electrodes in contact with human skin, thus representing a real ECG-registration situation. The yarn measurements showed a pure resistive characteristic proportional to the length. The electrodes made of pure stainless steel (electrode A) and 20% stainless steel/80% polyester (electrode B) showed acceptable stability of electrode potentials, the stability of A was better than that of B. The electrode made of silver plated copper (electrode C) was less stable. The electrode impedance was lower for electrodes A and B than that for electrode C. From an electrical properties point of view we recommend to use electrodes of type A to be used in intelligent textile medical applications.


Subject(s)
Microelectrodes , Telemetry/instrumentation , Textiles , Biomedical Engineering , Clothing , Copper , Electric Conductivity , Electric Impedance , Humans , Polyesters , Silver , Stainless Steel
6.
Ann Biomed Eng ; 34(11): 1666-77, 2006 Nov.
Article in English | MEDLINE | ID: mdl-17019618

ABSTRACT

Heart murmurs are often the first signs of pathological changes of the heart valves, and they are usually found during auscultation in the primary health care. Distinguishing a pathological murmur from a physiological murmur is however difficult, why an "intelligent stethoscope" with decision support abilities would be of great value. Phonocardiographic signals were acquired from 36 patients with aortic valve stenosis, mitral insufficiency or physiological murmurs, and the data were analyzed with the aim to find a suitable feature subset for automatic classification of heart murmurs. Techniques such as Shannon energy, wavelets, fractal dimensions and recurrence quantification analysis were used to extract 207 features. 157 of these features have not previously been used in heart murmur classification. A multi-domain subset consisting of 14, both old and new, features was derived using Pudil's sequential floating forward selection (SFFS) method. This subset was compared with several single domain feature sets. Using neural network classification, the selected multi-domain subset gave the best results; 86% correct classifications compared to 68% for the first runner-up. In conclusion, the derived feature set was superior to the comparative sets, and seems rather robust to noisy data.


Subject(s)
Algorithms , Artificial Intelligence , Diagnosis, Computer-Assisted/methods , Heart Auscultation/methods , Heart Murmurs/diagnosis , Pattern Recognition, Automated/methods , Sound Spectrography/methods , Aged , Female , Humans , Male , Reproducibility of Results , Sensitivity and Specificity
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