Comparison of Turnaround Time for Complete Blood Count Before and After LIS–HMIS Integration in a Clinical Laboratory

I Gede Widiaastawa, Putu Ayu Parwati, Ni Luh Gede Puspita Yanti

Abstract


Turnaround Time (TAT) is a key indicator of clinical laboratory performance as it affects diagnostic accuracy and clinical decision-making. This study aimed to compare complete blood count (CBC) TAT before and after the implementation of LIS–HMIS integration at Tabanan Regional General Hospital. This study used a quantitative comparative design with secondary data obtained from LIS and HMIS logs. A total of 316 records before integration (January–March 2025) and 316 records after integration (May–July 2025) were selected using simple random sampling. Data were analyzed using the Mann–Whitney test with a significance level of 0.05. The results showed that the proportion of TAT meeting the standard increased from 71.52% before integration to 75.95% after integration. However, statistical analysis indicated no significant difference (p=0.259). These findings suggest that LIS–HMIS integration improves operational efficiency, although the improvement is not statistically significant.

Keywords


Turnaround Time, Complete Blood Count, Hospital Management Information System, Laboratory Information System

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DOI: https://doi.org/10.30602/jlk.v9i2.2269

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