Determinants of Benefit-Maximizing Adaptation Strategy for the Use of Electronic Medical Records (EMR) Using the TPC-CMUA Approach at West Sidoarjo Regional Public Hospital
Determinasi Strategi Adaptasi Benefit-Maximizing Penggunaan RME dengan Pendekatan TPC-CMUA di RSUD Sidoarjo Barat
DOI:
https://doi.org/10.21070/ups.10121Keywords:
Electronic medical record (EMR), Task–Technology Fit, Social Support, Belief, Responsibility, Benefit MaximizingAbstract
This study aimed to analyze factors influencing the benefit-maximizing adaptation strategy in the use of Electronic Medical Records (EMR) at RSUD Sidoarjo Barat. A quantitative analytic design with a cross-sectional approach was applied. The population consisted of 52 healthcare workers using EMR across 13 outpatient units, with total sampling employed. Data were collected using a closed-ended questionnaire with a 1–5 Likert scale and analyzed using Structural Equation Modeling–Partial Least Square (SEM–PLS) with. The results indicated that task characteristics significantly affected task–technology fit, which in turn significantly influenced belief, while belief had a significant effect on responsibility. Social support significantly affected task–technology fit and was the only variable with a direct and significant influence on the benefit-maximizing adaptation strategy. These findings highlight the crucial role of social support in optimizing EMR utilization
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