| Literature DB >> 34945749 |
Xenia Butova1, Sergey Shayakhmetov2, Maxim Fedin3, Igor Zolotukhin1, Sergio Gianesini4,5.
Abstract
Consultation prioritization is fundamental in optimal healthcare management and its performance can be helped by artificial intelligence (AI)-dedicated software and by digital medicine in general. The need for remote consultation has been demonstrated not only in the pandemic-induced lock-down but also in rurality conditions for which access to health centers is constantly limited. The term "AI" indicates the use of a computer to simulate human intellectual behavior with minimal human intervention. AI is based on a "machine learning" process or on an artificial neural network. AI provides accurate diagnostic algorithms and personalized treatments in many fields, including oncology, ophthalmology, traumatology, and dermatology. AI can help vascular specialists in diagnostics of peripheral artery disease, cerebrovascular disease, and deep vein thrombosis by analyzing contrast-enhanced magnetic resonance imaging or ultrasound data and in diagnostics of pulmonary embolism on multi-slice computed angiograms. Automatic methods based on AI may be applied to detect the presence and determine the clinical class of chronic venous disease. Nevertheless, data on using AI in this field are still scarce. In this narrative review, the authors discuss available data on AI implementation in arterial and venous disease diagnostics and care.Entities:
Keywords: artificial intelligence; chronic venous disease; deep machine learning; peripheral artery disease; venous thromboembolism
Year: 2021 PMID: 34945749 PMCID: PMC8705683 DOI: 10.3390/jpm11121280
Source DB: PubMed Journal: J Pers Med ISSN: 2075-4426
AI tools based on learning with images.
| Authors, Year | Disease | AI Used for | Data Used for AI Learning | Principle of Operation | Number of Images | Performance Metrics | App Available Online |
|---|---|---|---|---|---|---|---|
| Kurugol S. et al., 2015 [ | PAD | Aorta size calculation, morphology, mural calcification distributions | CT images | Convolutional neural networks (Mask R-CNN) | 2500 | Dice coefficient of 0.92 ± 0.01 | No |
| Caetano Dos Santos F.L. et al., 2015 [ | Carotid arteries stenosis | Segmentation and analysis of atherosclerotic lesions in extracranial carotid arteries | CTA images | Convolutional neural networks | 59 | 71% accuracy | Yes |
| Raffort J. et al., 2015 [ | Abdominal aortic aneurism (AAA) | Quantitative analysis and characterization of AAA morphology, geometry, and fluid dynamics | CT images | Convolutional neural networks | 40 | 93% accuracy | No |
| Dehmeshki J. et al., (2014) [ | PAD | Arterial network, artery centerline detection, and distortion correction | CTA images | Computer-aided detection system | 15 | 88% accuracy | No |
| Huang SC. et al., (2020) [ | VTE | PE detection | CTPA images | Convolutional neural network | 1797 | AUROC score of 0.84 | No |
| Huang C. et al., 2019 [ | DVT | Proximal level of DVT detection | Contrast-enhanced MRI images | Convolutional neural network | 5388 | Dice coefficient of 0.79 | No |
| Ni J.C. et al., 2020 [ | DVT | Different inferior vena cava filters identification | Radiographic images | Deep-learning convolutional neural network | 1375 | F1 score of 0.97 | Yes |
| Rajathi V., Bhavani R.R., Wiselin Jiji G. (2019) [ | CVD | Venous ulcer detection | Venous ulcers photos | Region growing, K-means, kNN | 1770 | 94.85% accuracy | No |
| Shi Q., et al., 2018, [ | CVD | Varicose vein detection | Lower limbs photos | Multi-scale semantic model constructed to form the image representation with rich semantics | 221 | 90.92% accuracy | No |
| Hoobi M.M., Qaswaa A., 2017, [ | CVD | Varicose vein detection | Lower limbs photos | Probabilistic neural network | 100 | 94% accuracy | No |