Table 3.
Best practices | Description |
---|---|
AI/ML algorithms track cardiovascular status from in-hospital monitoring | Development of in-hospital electronic monitoring which is integrated with other technologies may predict events such as cardiac arrest, heart failure, AF, and stroke. |
AI/ML algorithms may identify conditions such as sepsis, hemorrhage, delirium, and overall clinical deterioration | AI/ML-based algorithms may provide early warning for many types of clinical deterioration, each of which may need different integrated workflows. |
AI/ML algorithms reduce alarm fatigue among staff | Alarm fatigue is a major issue in ICU settings. AI/ML algorithms may reduce excessive alarms that result from current rule-based systems. |
AI/ML algorithms improve allocation of services and resources | Use of AI/ML of in-hospital data streams may improve allocation of resources. |
AI/ML algorithms for in-hospital use assist in procedures | Procedures may be improved by AI/ML methods, such as robotic surgery. |
Gaps and challenges | Description |
Translation performance of predictive AI/ML algorithms across centers | AI/ML-based alerting algorithms exhibit robust performance when tested across institutions and places that reflect differences in clinical settings or study designs. |
Identification of patients, conditions where monitoring may improve outcomes | It is unclear which patients benefit from automated alerting systems, and if that affects disparities in in-hospital outcomes. |
Evaluation of the effect of alarms across conditions and patient groups | Limited evaluation has been performed on the effect of false positive triggers and their reduction on clinician workload and health system cost. |
Acceleration and scaling annotation of in-hospital monitoring data | Because the annotation of in-hospital monitoring data is labor intensive, and complicated by noise and artifacts, the limited availability of large, well-labeled datasets hampers progress. Open-source data sets may be noise free and not representative. New techniques (eg, semisupervised ML) may be effective. |
Real-time operation of alert triggering AI/ML algorithms, across hospital settings | Few hospitals have pipelines that integrate physiological monitoring with other systems, which may widen the gap between safety net and high cost among hospitals. |
AF indicates atrial fibrillation; AI, artificial intelligence; ICU, intensive care unit; and ML, machine learning.