English  |  正體中文  |  简体中文  |  全文筆數/總筆數 : 64191/96979 (66%)
造訪人次 : 8222464      線上人數 : 7412
RC Version 7.0 © Powered By DSPACE, MIT. Enhanced by NTU Library & TKU Library IR team.
搜尋範圍 查詢小技巧:
  • 您可在西文檢索詞彙前後加上"雙引號",以獲取較精準的檢索結果
  • 若欲以作者姓名搜尋,建議至進階搜尋限定作者欄位,可獲得較完整資料
  • 進階搜尋
    請使用永久網址來引用或連結此文件: https://tkuir.lib.tku.edu.tw/dspace/handle/987654321/125903


    題名: Predictive Modeling for Patient Queue Length in Blood Collection Centers during Peak Hours using Multi-step-ahead Forecasting and Machine Learning Models
    作者: Chen, Ming-shu;Liu, Tzu-chi;Kao, Kuo-ching;Yang, Chih-te;Lu, Chi-jie
    關鍵詞: Blood collection center;Patient Queue Length;Multi-step ahead forecasting;Machine learning;Outpatient Phlebotom
    日期: 2024-07-09
    上傳時間: 2024-08-08 12:05:46 (UTC+8)
    摘要: Blood collection centers in hospitals experience congestion during peak hours, leading to long waiting times for patients. This study investigates the application of machine learning to predict patient queue lengths in blood collection centers, aiming to minimize wait times and improve patient satisfaction. Existing literature explores various approaches to address congestion, including call systems, quality improvement initiatives, and phlebotomy assistant systems. However, these methods primarily focus on improving service efficiency, neglecting the challenge of predicting patient arrival patterns. Traditional queue length forecasting methods like simple moving average (SMA) have limitations. This study proposes a multi-step forecasting approach using machine learning techniques to predict patient queue lengths during peak times. The research employs two frameworks, Direct and Hybrid, incorporating six machine learning algorithms: Random Forest (RF), Extreme Gradient Boosting (XGBoost), Lasso Multiple Linear Regression (LaMLR), Multivariate Adaptive Regression Splines (MARS), Light Gradient Boosting Machine (LightGBM), and CatBoost. The study utilizes data from a medical center in Taiwan, covering a period of three years. Empirical results demonstrate that the Random Forest technique with the Direct framework achieves the most accurate predictions for one to four time steps ahead. For four-step-ahead forecasting, CatBoost with the Hybrid framework proves most effective. These findings suggest that machine learning offers a promising approach for predicting patient queue lengths in blood collection centers. This information can be valuable for staff scheduling, resource allocation, and implementing early congestion mitigation strategies, ultimately enhancing patient experience and healthcare service quality.
    顯示於類別:[企業管理學系暨研究所] 會議論文

    文件中的檔案:

    沒有與此文件相關的檔案.

    在機構典藏中所有的資料項目都受到原著作權保護.

    TAIR相關文章

    DSpace Software Copyright © 2002-2004  MIT &  Hewlett-Packard  /   Enhanced by   NTU Library & TKU Library IR teams. Copyright ©   - 回饋