Clinical Laboratory Employees' Attitudes Toward Artificial Intelligence.

作者: Orly Ardon , Robert L Schmidt

DOI: 10.1093/LABMED/LMAA023

关键词:

摘要: Objective The objective of this study was to determine the attitudes laboratory personnel toward application artificial intelligence (AI) in laboratory. Methods We surveyed employees who covered a range work roles, environments, and educational levels. Results survey response rate 42%. Most respondents (79%) indicated that they were at least somewhat familiar with AI. Very few (4%) classified themselves as experts. Contact AI varied by level (P = .005). Respondents believed could help them perform their reducing errors (24%) saving time (16%). most common concern (27%) job security (being replaced AI). majority (64%) expressed support for development projects organization. Conclusions Laboratory see potential generally adoption tools but have concerns regarding quality performance.

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