| Literature DB >> 33343657 |
Maksut Senbekov1, Timur Saliev1, Zhanar Bukeyeva2, Aigul Almabayeva2, Marina Zhanaliyeva2, Nazym Aitenova2, Yerzhan Toishibekov3, Ildar Fakhradiyev1.
Abstract
BACKGROUND: The implementation of medical digital technologies can provide better accessibility and flexibility of healthcare for the public. It encompasses the availability of open information on the health, treatment, complications, and recent progress on biomedical research. At present, even in low-income countries, diagnostic and medical services are becoming more accessible and available. However, many issues related to digital health technologies remain unmet, including the reliability, safety, testing, and ethical aspects.Entities:
Year: 2020 PMID: 33343657 PMCID: PMC7732404 DOI: 10.1155/2020/8830200
Source DB: PubMed Journal: Int J Telemed Appl ISSN: 1687-6415
Figure 1Scheme of main applications of digital technologies in healthcare.
Figure 2Flow chart summarizing the search process and results.
Examples of AI applications in healthcare.
| Applications | Study aims | Outcomes | References |
|---|---|---|---|
| Ultrasound imaging | Development of deep learning detection network for ultrasonic equipment for real-time detection of breast cancer. | Method to realize the intelligence of the low-computation-power ultrasonic equipment, and real-time assistance for detection of breast lesions was developed. | [ |
|
| |||
| CT imaging | To perform a quantitative and qualitative evaluation of a deep learning image reconstruction (DLIR) algorithm in contrast-enhanced oncologic CT of the abdomen. | DLIR improved CT evaluation of the abdomen in the portal venous phase. DLIR strength should be chosen to balance the degree of desired denoising for a clinical task relative to mild blurring. | [ |
|
| |||
| MRI | To develop a deep learning algorithm for automated detection and localization of intracranial aneurysms on time-of-flight MR angiography and evaluate its diagnostic performance. | A deep learning algorithm detected intracranial aneurysms with a high diagnostic performance which was validated using an external data set. | [ |
|
| |||
| Cancer diagnosis | To conduct the breast cancer diagnosis by using principal component analysis-support vector machine (PCA-SVM) and principal component analysis-linear discriminant analysis-support vector machine (PCA-LDA-SVM) model classifier algorithms (LabVIEW). | The proposed method provides improvement especially for the polynomial kernel function. An increase in classification accuracy was observed in the test phase compared to PCA-SVM, along with improved classification. | [ |
|
| |||
| Cancer diagnosis | To develop a computerized image analysis system using deep learning for the detection of esophageal and esophagogastric junctional (E/J) adenocarcinoma. | AI system achieved high sensitivity and acceptable specificity for the detection of E/J cancers and may be a good supporting tool for the screening of E/J cancers. | [ |
|
| |||
| Cancer diagnosis | To study whether an artificial intelligence (AI) system can increase the accuracy of characterizations of polyps by endoscopists of different skill levels. | The method significantly increased the accuracy of evaluation of diminutive colorectal polyps and reduced the time of diagnosis by endoscopists. | [ |
|
| |||
| Drug development | To study whether recurrent neural networks can be trained as generative models for molecular structures, similar to statistical language models in natural language processing. | Recurrent neural networks based on the long short-term memory (LSTM) can be applied to learn a statistical chemical language model. The model can generate large sets of novel molecules with physicochemical properties that are similar to the training molecules ones. | [ |
|
| |||
| Genomics | To validate the ability of a computational approach based on deep neural networks (DeepCpG) to predict methylation states in single cells. | DeepCpG yields substantially more accurate predictions than old methods. It was shown that the model parameters can be interpreted, thereby providing insights into how sequence composition affects methylation variability. | [ |
List of examples of the applications of smart devices for heart monitoring.
| Cardiologic applications | Proposed device | Outcomes | References |
|---|---|---|---|
| Electrocardiogram (ECG) | Wearable ECG measurement device (smart clothes) | The best electrode positions to be used to measure ECG signals by means of a two electrodes recording system were identified, and the presented wearable measurement device can obtain good performance when one person is under the conditions of sleeping and jogging. | [ |
|
| |||
| Electrocardiogram (ECG) | Wearable smartphone-enabled cardiac monitoring device (smart sock) | The home use of smartphone-enabled technology to monitor the neonatal and infant cardiac heart rate can identify asymptomatic arrhythmias. | [ |
|
| |||
| Electrocardiogram (ECG) | Wearable ECG device. | The study demonstrated the feasibility of real-time AF detection by means of a wearable ECG device. It constitutes a promising step towards the development of novel ECG monitoring systems to tackle the growing AF epidemic. | [ |
|
| |||
| Electrocardiogram (ECG) | Smart 12-lead ECG acquisition T-shirt. | A smart T-shirt with 13 textiles electrodes allows short-duration 12-lead ECG acquisition with quality levels comparable to Holter recordings. The novel device should now be evaluated for long-term noninvasive ECG monitoring. | [ |
|
| |||
| Heart rate | Wrist-worn heart rate (HR) monitor. | HR accuracy of two commercially available smart watches [SW] (Fitbit charge heart rate [FB] and apple watch series 3 [AW]) was compared with Holter monitoring in an ambulant patient cohort. The smart watches underestimated heart rate in AF particularly at heart rate ranges > 100 bpm. | [ |
|
| |||
| Heart rate and blood pressure | Wireless pulse and blood pressure monitoring system. | A wireless blood pressure monitoring system was designed and implemented for a smartphone-based management unit with Graphical User Interface (GUI) and database. | [ |
|
| |||
| Heart rate | Wrist-worn device. | The study explored the feasibility to estimate heart rate recovery parameters after stair climbing using a wrist-worn device with embedded photoplethysmography and barometric pressure sensors. The proposed approach to monitoring heart rate recovery parameters in an unobtrusive way that may supplement the information provided by personal health monitoring devices. | [ |
|
| |||
| Electrocardiogram (ECG) | Wearable sensor device (Bioharness 3.0 by Zephyr). | SVM-based algorithm designed to detect atrial fibrillation (AF). The results showed a sensitivity of 78% and a specificity of 66%, making this version of e-health system suitable for real-time monitoring of AF events. | [ |
|
| |||
| Heartbeat and cardiac-related motions of the chest | Smart textile-based on fiber Bragg grating (FBG) sensor. | The study demonstrated the capability of the proposed smart textile to monitor cardiac activity at different measurement points. The evaluation of the influence of measurement sites on the signal amplitude can be considered as a first effort to drive the standardization of sensor positioning on the chest. | [ |
Figure 3The applications of telemedicine in healthcare.
Figure 4Summary of applications of digital health technologies discussed in the review.