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Why time tracking is important for healthcare professionals? 


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Time tracking is important for healthcare professionals because it allows for effective management of available resources, reduces patient care delays, and avoids unnecessary and costly capacity expansions . It also helps in balancing demand management and staff satisfaction, as deviations from the scheduled plan can cause delays in patient access and lead to provider dissatisfaction . Additionally, time tracking, specifically "time in range" (TIR), is a metric derived from continuous glucose monitoring (CGM) data that can optimize medication regimens, provide insights for informed clinical decisions, and empower people with diabetes to successfully manage their condition . However, limited access to CGM and lack of healthcare professionals' training/education are barriers to wider adoption of time tracking . Furthermore, real-time tracking and retrospective analysis of transaction data enable locating items and determining metrics for "time to test" and "time to treatment," which can improve workflow efficiency and inventory control in healthcare facilities . Overall, time tracking tools, such as RFID and real-time location systems (RTLS), can deliver better patient care, improve workflow efficiency, and result in cost savings for healthcare organizations .

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The provided paper does not specifically mention why time tracking is important for healthcare professionals.
The provided paper does not explicitly mention why time tracking is important for healthcare professionals.
Time tracking is important for healthcare professionals to ensure that their task assignments are according to the scheduled plan and to proactively adjust in time for future schedules.

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