Implementation of Artificial Intelligence in Laboratory Medicine

Author:

Anjankar Ashish Prakash1,Jha Roshan Kumar1,Lambe Sandip2

Affiliation:

1. Department of Biochemistry, JNMC, DMIMS (Deemed to be University), DMIMS (Deemed to be University), Wardha, Maharashtra, India

2. Department of Biochemistry, SMBT Institute of Medical Sciences and Research Centre, Nashik, Maharashtra, India

Abstract

Abstract Introduction: In advancing health care, the evolution of laboratory medicine is necessary to overcome the need for accurate, readily available, and relative data within the appropriate time window; we see artificial intelligence (AI) in laboratory medicine. The introduction of AI in the health-care sector has been believed as the practice of composite software and algorithms to compete with human intelligence in analysis, diagnosis, and research. Materials and Methods: A Google Form-based survey study on the use of AI in the laboratory setting was planned stepwise independently. First, 123 participants were shortlisted for an online discussion board; they were introduced to AI and its benefit and limitation in laboratory medicine. Content analysis was done directly using a close-ended questionnaire-based survey. In parallel, competent doctors and psychologists analyzed answers used for a further rough framework of themes. Results: Our participants with a positive attitude believe AI in the laboratory will have benefits with proper training and better information technology support. It is also time-saving, accurate, and cost-effective for diagnostic purposes. Conclusion: General practitioners and laboratory experts should uphold AI implementation. Attitude toward adopting AI was a significant factor in AI implementation and use. Further counseling of participants toward AI and its benefit in laboratory medicine will be helpful in better patient care and diagnosis.

Publisher

Medknow

Subject

General Medicine

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