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Effective asset management for hospitals with RFID

机译:使用RFID对医院进行有效的资产管理

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The healthcare sector has been confronted with a growing necessity to reduce operational cost. Many hospitals have been focusing their efforts in optimizing their inventory management procedures through the incorporation of technological solutions such as tracking devices and data mining to come up with an ideal inventory model. Demand forecasting is an integral part of inventory management and hospitals are no exception. Time series forecasting methods are widely used in traditional approaches. Limited studies integrated asset tracking technology and neural network analysis to facilitate demand forecast. This paper proves that neural network forecasting has a key edge over traditional time series forecasting methods. It also evaluates the improvements in the efficiency of the inventory management of infusion pumps at Tan Tock Seng Hospital (TTSH) due to the integration of radio frequency identification (RFID) tagging and neural network forecasting to the current work flow process to allow it to capture and manipulate the data relating to the movement and usage of the infusion pumps. Projected ward and the total in-patient usage data were compared using error analysis algorithms such as mean squared error (MSE), mean absolute deviation (MAD) and mean absolute percentage error (MAPE). The potential benefits of the proposed system, contribution of current study and recommendations for future research are also mentioned at the end of this paper.
机译:医疗保健部门面临降低运营成本的日益增长的需求。许多医院一直在通过结合跟踪设备和数据挖掘等技术解决方案来优化库存管理程序,以提供理想的库存模型。需求预测是库存管理不可或缺的一部分,医院也不例外。时间序列预测方法已在传统方法中广泛使用。有限的研究将资产跟踪技术与神经网络分析相结合,以促进需求预测。本文证明了神经网络预测比传统的时间序列预测方法具有关键优势。它还评估了陈笃生医院(TTSH)的输液泵库存管理效率的提高,这是由于将射频识别(RFID)标签和神经网络预测集成到当前工作流程中,从而使其能够捕获并处理与输液泵的运动和使用有关的数据。使用误差分析算法,例如均方误差(MSE),平均绝对偏差(MAD)和平均绝对百分比误差(MAPE),比较了预计病房和住院总使用数据。本文末尾还提到了拟议系统的潜在好处,当前研究的贡献以及对未来研究的建议。

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