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1.
Comput Intell Neurosci ; 2016: 3289801, 2016.
Article in English | MEDLINE | ID: mdl-27418923

ABSTRACT

The latest generation of convolutional neural networks (CNNs) has achieved impressive results in the field of image classification. This paper is concerned with a new approach to the development of plant disease recognition model, based on leaf image classification, by the use of deep convolutional networks. Novel way of training and the methodology used facilitate a quick and easy system implementation in practice. The developed model is able to recognize 13 different types of plant diseases out of healthy leaves, with the ability to distinguish plant leaves from their surroundings. According to our knowledge, this method for plant disease recognition has been proposed for the first time. All essential steps required for implementing this disease recognition model are fully described throughout the paper, starting from gathering images in order to create a database, assessed by agricultural experts. Caffe, a deep learning framework developed by Berkley Vision and Learning Centre, was used to perform the deep CNN training. The experimental results on the developed model achieved precision between 91% and 98%, for separate class tests, on average 96.3%.


Subject(s)
Image Processing, Computer-Assisted , Neural Networks, Computer , Plant Diseases/classification , Plant Leaves/classification , Algorithms , Databases, Factual , Reproducibility of Results
2.
Stud Health Technol Inform ; 224: 201-6, 2016.
Article in English | MEDLINE | ID: mdl-27225580

ABSTRACT

The burden of chronic disease and associated disability present a major threat to financial sustainability of healthcare delivery systems. The need for cost-effective early diagnosis and disease prevention is evident driving the development of personalized home health solutions. The proposed solution presents an easy to use ECG monitoring system. The core hardware component is a biosensor dongle with sensing probes at one end, and micro USB interface at the other end, offering reliable and unobtrusive sensing, preprocessing and storage. An additional component is a smart phone, providing both the biosensor's power supply and an intuitive user application for the real-time data reading. The system usage is simplified, with innovative solutions offering plug and play functionality avoiding additional driver installation. Personalized needs could be met with different sensor combinations enabling adequate monitoring in chronic disease, during physical activity and in the rehabilitation process.


Subject(s)
Electrocardiography, Ambulatory/instrumentation , Smartphone , Electrocardiography, Ambulatory/methods , Humans , Mobile Applications , Telemedicine/instrumentation , Wearable Electronic Devices
3.
ScientificWorldJournal ; 2014: 818365, 2014.
Article in English | MEDLINE | ID: mdl-24772034

ABSTRACT

Different ways have been used to stratify risk in acute coronary syndrome (ACS) patients. The aim of the study was to examine the usefulness of echocardiographic parameters as predictors of in-hospital outcome in patients with ACS after percutaneous coronary intervention (PCI). A data of 2030 patients with diagnosis of ACS hospitalized from December 2008 to December 2011 was used to develop a risk model based on echocardiographic parameters using the binary logistic regression. This model was independently evaluated in validation cohort prospectively (954 patients admitted during 2012). In-hospital mortality in derivation cohort was 7.73%, and 6.28% in validation cohort. Developed model has been designed with 4 independent echocardiographic predictors of in-hospital mortality: left ventricular ejection fraction (LVEF RR = 0.892; 95%CI = 0.854-0.932, P < 0.0005), aortic leaflet separation diameter (AOvs RR = 0.131; 95%CI = 0.027-0.627, P = 0.011), right ventricle diameter (RV RR = 2.675; 95%CI = 1.109-6.448, P = 0.028) and right ventricle systolic pressure (RVSP RR = 1.036; 95%CI = 1.000-1.074, P = 0.048). Model has good prognostic accuracy (AUROC = 0.84) and it retains good (AUROC = 0.78) when testing on the validation cohort. Risks for in-hospital mortality after PCI in ACS patients using echocardiographic measurements could be accurately predicted in contemporary practice. Incorporation of such developed model should facilitate research, clinical decisions, and optimizing treatment strategy in selected high risk ACS patients.


Subject(s)
Acute Coronary Syndrome/diagnostic imaging , Acute Coronary Syndrome/surgery , Echocardiography , Percutaneous Coronary Intervention , Acute Coronary Syndrome/mortality , Adult , Aged , Aged, 80 and over , Algorithms , Cohort Studies , Hospital Mortality , Humans , Logistic Models , Middle Aged , Models, Cardiovascular , Prognosis , Treatment Outcome
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