| Literature DB >> 34680860 |
Kamila Majidova1, Julia Handfield1, Kamran Kafi1, Ryan D Martin1, Ryszard Kubinski1.
Abstract
Inflammatory bowel diseases (IBD), subdivided into Crohn's disease (CD) and ulcerative colitis (UC), are chronic diseases that are characterized by relapsing and remitting periods of inflammation in the gastrointestinal tract. In recent years, the amount of research surrounding digital health (DH) and artificial intelligence (AI) has increased. The purpose of this scoping review is to explore this growing field of research to summarize the role of DH and AI in the diagnosis, treatment, monitoring and prognosis of IBD. A review of 21 articles revealed the impact of both AI algorithms and DH technologies; AI algorithms can improve diagnostic accuracy, assess disease activity, and predict treatment response based on data modalities such as endoscopic imaging and genetic data. In terms of DH, patients utilizing DH platforms experienced improvements in quality of life, disease literacy, treatment adherence, and medication management. In addition, DH methods can reduce the need for in-person appointments, decreasing the use of healthcare resources without compromising the standard of care. These articles demonstrate preliminary evidence of the potential of DH and AI for improving the management of IBD. However, the majority of these studies were performed in a regulated clinical environment. Therefore, further validation of these results in a real-world environment is required to assess the efficacy of these methods in the general IBD population.Entities:
Keywords: Crohn’s disease (CD); artificial intelligence (AI); diagnosis; digital health (DH); inflammatory bowel disease (IBD); monitoring; prognosis; treatment; ulcerative colitis (UC)
Mesh:
Year: 2021 PMID: 34680860 PMCID: PMC8535572 DOI: 10.3390/genes12101465
Source DB: PubMed Journal: Genes (Basel) ISSN: 2073-4425 Impact factor: 4.096
Figure 1An overview of the traditional approaches to care for IBD patients and the novel digital health and artificial intelligence approaches reviewed.
Figure 2Selection process for articles about IBD and DH or AI in diagnosis, treatment, monitoring, or prognosis. Describes the trajectory of reviewing articles based on screening process and selection criteria.
Summary of key findings from reviewed articles. Characterizes each article in the review by their focus on digital health (DH) or artificial intelligence (AI) as a discipline, the aspect of inflammatory bowel disease (IBD) care that it addresses (diagnosis, treatment, monitoring, prognosis), and the key finding(s). Underlined and italicized are the categories of each approach to IBD care. In bold are the specific approaches utilized by the investigators. Abbreviations: Crohn’s disease (CD), area under the curve (AUC), random forest (RF), ulcerative colitis (UC), artificial intelligence (AI), inflammatory bowel disease (IBD), area under the receiver operator curve (AuROC), tumor necrosis factor (TNF), machine learning (ML), Telemonitoring of Crohn’s Disease and Ulcerative Colitis (TECCU), Simple Clinical Colitis Activity Index (SCCAI), TELEmedecine for Patients with Inflammatory Bowel Disease (TELE-IBD), quality of life (QoL), fecal calprotectin (FC), and health-related quality of life (HRQoL).
| Digital Health | ||
|---|---|---|
| Diagnosis | ||
| Treatment | Treatment Adherence and Maintenance | |
| Treatment Management | ||
| Monitoring | Telemedicine and Telemanagement Approaches | Mobile Applications |
| myIBDcoach | HealthPROMISE | |
| Prognosis | IBD-Related Predictions | |
| Artificial Intelligence | ||
| Diagnosis | IBD Detection | |
| Treatment | Treatment Response Predictions | |
| Monitoring | Inflammation and Disease Activity Monitoring | |
| Prognosis | IBD Assessment and Predictions | |
The underlined and italicized terms should ideally be grouped with the text underneath it.