| Literature DB >> 35059445 |
Sergio Sanchez-Martinez1, Oscar Camara2, Gemma Piella2, Maja Cikes3, Miguel Ángel González-Ballester2,4, Marius Miron5, Alfredo Vellido6, Emilia Gómez2,5, Alan G Fraser7, Bart Bijnens1,4,8.
Abstract
The use of machine learning (ML) approaches to target clinical problems is called to revolutionize clinical decision-making in cardiology. The success of these tools is dependent on the understanding of the intrinsic processes being used during the conventional pathway by which clinicians make decisions. In a parallelism with this pathway, ML can have an impact at four levels: for data acquisition, predominantly by extracting standardized, high-quality information with the smallest possible learning curve; for feature extraction, by discharging healthcare practitioners from performing tedious measurements on raw data; for interpretation, by digesting complex, heterogeneous data in order to augment the understanding of the patient status; and for decision support, by leveraging the previous steps to predict clinical outcomes, response to treatment or to recommend a specific intervention. This paper discusses the state-of-the-art, as well as the current clinical status and challenges associated with the two later tasks of interpretation and decision support, together with the challenges related to the learning process, the auditability/traceability, the system infrastructure and the integration within clinical processes in cardiovascular imaging.Entities:
Keywords: artificial intelligence; cardiovascular imaging; clinical decision making; deep learning; diagnosis; machine learning; prediction
Year: 2022 PMID: 35059445 PMCID: PMC8764455 DOI: 10.3389/fcvm.2021.765693
Source DB: PubMed Journal: Front Cardiovasc Med ISSN: 2297-055X
Figure 1Clinical decision-making flowchart, from data acquisition and extraction, to patient's status interpretation and associated decision.
Figure 2Different tasks where ML can support clinical decision-making.
SWOT analysis—status interpretation and decision-making.
| Strengths | Weaknesses |
| • Allow objective and thorough comparison to populations | • Need well-curated, representative databases for training |
| Opportunities | Threats |
| • Stimulate the man/machine collaboration | • Harm patients if wrong decisions are taken—high-risk |