Developing patient-driven artificial intelligence based on personal rankings of care decision making steps
Lauri Lahti (1) ((1) Department of Computer Science, Aalto University, School of Science, Finland)

TL;DR
This paper introduces a novel methodology using patient self-ratings and statistical analysis to understand decision-making steps in healthcare, aiming to develop personalized AI support for patient care.
Contribution
It presents a new approach combining questionnaires and statistical patterns to analyze healthcare decision-making processes for AI development.
Findings
Significant differences in ratings based on respondent backgrounds.
Dependencies between initial ratings and subsequent reordering.
Methodology enables analysis of personalized care decision paths.
Abstract
We propose and experimentally motivate a new methodology to support decision-making processes in healthcare with artificial intelligence based on personal rankings of care decision making steps that can be identified with our methodology, questionnaire data and its statistical patterns. Our longitudinal quantitative cross-sectional three-stage study gathered self-ratings for 437 expression statements concerning healthcare situations on Likert scales in respect to "the need for help", "the advancement of health", "the hopefulness", "the indication of compassion" and "the health condition", and 45 answers about the person's demographics, health and wellbeing, also the duration of giving answers. Online respondents between 1 June 2020 and 29 June 2021 were recruited from Finnish patient and disabled people's organizations, other health-related organizations and professionals, and…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Healthcare Systems and Public Health
