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1.
Technol Health Care ; 32(1): 103-115, 2024.
Article in English | MEDLINE | ID: mdl-37545263

ABSTRACT

BACKGROUND: In wireless communication standard 4G and 5G, the body centric network plays an important role for the wireless communication between various devices. OBJECTIVE: This research relates to a wide-band conformal co-planar waveguide (CPW) antenna for wearable applications. METHODS: The proposed CPW antenna is printed on 0.1 mm thick bio-compatible polymide substrate whose dielectric constant and permittivity are 3.5 and 0.02 respectively. The total area of the antenna is around 17.5 × 15 mm2 which is significantly smaller than the wearable antennas proposed in literature. The proposed antenna is designed to operate in new ISM band 5.8 GHz with the bandwidth of 5.3-6.3 GHz with 2:1 Voltage Standing Wave Ratio (VSWR). The antenna is printed on the flexible substrate and hence robustness of device is evaluated by bending analysis. It reveals the superior performance of the designed CPW antenna over the desired spectrum of operation. RESULTS: Specific Absorption Rate (SAR) is calculated after placing the antenna at various places of human phantom model and showed that SAR values are below 1.6 W/Kg which is the maximum margin recommended by Federal Communication Commission (FCC), i.e when tested with 1 g and 10 g of human tissue of phantom model, for the test frequency range of 5.5-6.1 GHz, SAR value falls between 0.9987 and 0.921 W/Kg respectively. The antenna also shows the radiation efficiency around 92% with overall realized gain 5.2 dBi which are substantial values for wearable applications. CONCLUSION: The outcomes of this research revealed the feasibility of the recommended antenna becoming a major contender of future Internet of Things (IoT) applications.


Subject(s)
Wearable Electronic Devices , Wireless Technology , Humans , Equipment Design , Prostheses and Implants
2.
Cogn Neurodyn ; 16(5): 1135-1149, 2022 Oct.
Article in English | MEDLINE | ID: mdl-36237411

ABSTRACT

Because of the scarcity of caregivers and the high cost of medical devices, it is difficult to keep track of the aging population and provide assistance. To avoid deterioration of health issues, continuous monitoring of personal health should be done prior to the intervention. If a problem is discovered, the IoT platform collects and presents the caretaker with graphical data. The death rates of older patients are reduced when projections are made ahead of time. Patients can die as a result of minor abnormalities in their ECG. The cardiac dysrhythmia/irregular heart rate is classified with several multilayer parameters using a deep convolutional neural network (CNN) approach in this paper. The key benefit of utilizing this CNN approach is that it can handle databases that have been purposefully oversampled. Using the XGBoost approach, these are oversampled to deal with difficulties like minority class and imbalance. XGBoost is a decision tree-based ensemble learning algorithm that uses a gradient boosting framework. It uses an artificial neural network and predicts the unstructured data in a structured manner. This CNN-based supervised learning model is tested and simulated on a real-time elderly heart patient IoT dataset. The proposed methodology has a recall value of 100%, an F1-Score of 94.8%, a precision of 98%, and an accuracy of 98%, which is higher than existing approaches like decision trees, random forests, and Support Vector Machine. The results reveal that the proposed model outperforms state-of-the-art methodologies and improves elderly heart disease patient monitoring with a low error rate.

3.
Wirel Pers Commun ; 124(4): 3013-3034, 2022.
Article in English | MEDLINE | ID: mdl-35370364

ABSTRACT

Health monitoring is a prominent factor in a person's daily life. Healthcare for the elderly is becoming increasingly important as the population ages and grows. The health of an Elderly patient needs frequent examination because the health deteriorates with an increasing age profile. IoT is utilized everywhere in the health industry to identify and communicate with the patients by the professional. A cyber-physical system (CPS) is used to combine physical processes with communication and computation. CPS and IoT are both wirelessly connected via information and communication technologies. The novelty of the research lies in the Honey Badger (HB) algorithm optimized Least-squares Support-Vector Machine (LS-SVM) architecture proposed in this paper for monitoring multi parameters to categorize and determine the abnormal patient details present in the dataset. Since the performance of the LS-SVM is highly dependent on the width coefficient and regularization factor, the HB algorithm is employed in this study to optimize both parameters. The HB algorithm is capable of solving the medical problem that has a complex search space and it also improves the convergence performance of the LS-SVM classifier by achieving a tradeoff between the exploration and exploitation phases. The HB optimized LS-SVM classifier predicts the patients with deteriorating health conditions and evaluates the accuracy of the results obtained. In the end, the statistical data is provided to the caretaker via a smartphone application as a monthly statistical report. The proposed model offers a Positive Predictive Value (PPV), Negative Predictive Value (NPV), and an Area Under the Curve (AUC) score of 0.9478, 0.9587, and 0.9617 respectively which is relatively higher than the conventional techniques such as Decision tree, Random Forest, and Support Vector Machine (SVM) classifier. The simulation results demonstrate that the proposed model efficiently models the sensor parameters and offers timely support to elderly patients.

4.
Telemed J E Health ; 13(3): 313-21, 2007 Jun.
Article in English | MEDLINE | ID: mdl-17603834

ABSTRACT

Undoubtedly, blindness is a major trauma, which affects an individual not only physically but also emotionally. There are approximately 46 million visually impaired people throughout the world. It is becoming a global problem. In India alone, 19 million people are totally blind or else have visual defects. Out of this 19 million, 15 million reside in rural areas. India is among the countries which suffers from a shortage of doctors. There are only about 12,000 ophthalmologists in India, with most concentrating their practice in urban localities. Additionally, the inadequate infrastructures of roads, telecommunication, transport and financial status of the patients make it even more difficult to provide health care in rural areas. Teleophthalmology is a new branch of telemedicine that offers solutions to this serious problem. This paper discusses Indian teleophthalmology projects known as Sankara Netralaya Teleophthalmology Project (SNTOP) and Aravind Teleophthalmology Network (ATN). These have proven successful in the state of Tamilnadu, India, both in rural and secondary healthcare centers.


Subject(s)
Health Services Accessibility , Mobile Health Units/organization & administration , Ophthalmology/organization & administration , Rural Health Services/organization & administration , Telemedicine/organization & administration , Diagnostic Techniques, Ophthalmological , Humans , India , Libraries, Digital , Medically Underserved Area , Patient Satisfaction , Pilot Projects , Program Evaluation
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