Machine Learning-Based Patient Load Prediction and IoT Integrated Intelligent Patient Transfer Systems

A mismatch between staffing ratios and service demand leads to overcrowding of patients in waiting rooms of health centers. Overcrowding consequently leads to excessive patient waiting times, incomplete preventive service delivery and disgruntled medical staff. Worse, due to the limited patient load...

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Main Authors: Kambombo Mtonga, Santhi Kumaran, Chomora Mikeka, Kayalvizhi Jayavel, Jimmy Nsenga
Format: Article
Language:English
Published: MDPI AG 2019-11-01
Series:Future Internet
Subjects:
Online Access:https://www.mdpi.com/1999-5903/11/11/236
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spelling doaj-6e08118bf2254e73bc346c1eddd550c12020-11-25T02:27:40ZengMDPI AGFuture Internet1999-59032019-11-01111123610.3390/fi11110236fi11110236Machine Learning-Based Patient Load Prediction and IoT Integrated Intelligent Patient Transfer SystemsKambombo Mtonga0Santhi Kumaran1Chomora Mikeka2Kayalvizhi Jayavel3Jimmy Nsenga4African Center of Excellence in Internet of Things (ACEIoT), College of Science and Technology, University of Rwanda, Kigali P.O. Box 3900, RwandaAfrican Center of Excellence in Internet of Things (ACEIoT), College of Science and Technology, University of Rwanda, Kigali P.O. Box 3900, RwandaDepartment of Physics, University of Malawi, Zomba P.O. Box 280, MalawiDepartment of Information Technology, School of Computing, SRM Institute of Science and Technology, Kattankulathur 603203, IndiaAfrican Center of Excellence in Internet of Things (ACEIoT), College of Science and Technology, University of Rwanda, Kigali P.O. Box 3900, RwandaA mismatch between staffing ratios and service demand leads to overcrowding of patients in waiting rooms of health centers. Overcrowding consequently leads to excessive patient waiting times, incomplete preventive service delivery and disgruntled medical staff. Worse, due to the limited patient load that a health center can handle, patients may leave the clinic before the medical examination is complete. It is true that as one health center may be struggling with an excessive patient load, another facility in the vicinity may have a low patient turn out. A centralized hospital management system, where hospitals are able to timely exchange patient load information would allow excess patient load from an overcrowded health center to be re-assigned in a timely way to the nearest health centers. In this paper, a machine learning-based patient load prediction model for forecasting future patient loads is proposed. Given current and historical patient load data as inputs, the model outputs future predicted patient loads. Furthermore, we propose re-assigning excess patient loads to nearby facilities that have minimal load as a way to control overcrowding and reduce the number of patients that leave health facilities without receiving medical care as a result of overcrowding. The re-assigning of patients will imply a need for transportation for the patient to move from one facility to another. To avoid putting a further strain on the already fragmented ambulatory services, we assume the existence of a scheduled bus system and propose an Internet of Things (IoT) integrated smart bus system. The developed IoT system can be tagged on buses and can be queried by patients through representation state transfer application program interfaces (APIs) to provide them with the position of the buses through web app or SMS relative to their origin and destination stop. The back end of the proposed system is based on message queue telemetry transport, which is lightweight, data efficient and scalable, unlike the traditionally used hypertext transfer protocol.https://www.mdpi.com/1999-5903/11/11/236deep convolutional neural networkstime series forecastpatient overcrowdingpatient load predictionsmart transportintelligent patient transfer
collection DOAJ
language English
format Article
sources DOAJ
author Kambombo Mtonga
Santhi Kumaran
Chomora Mikeka
Kayalvizhi Jayavel
Jimmy Nsenga
spellingShingle Kambombo Mtonga
Santhi Kumaran
Chomora Mikeka
Kayalvizhi Jayavel
Jimmy Nsenga
Machine Learning-Based Patient Load Prediction and IoT Integrated Intelligent Patient Transfer Systems
Future Internet
deep convolutional neural networks
time series forecast
patient overcrowding
patient load prediction
smart transport
intelligent patient transfer
author_facet Kambombo Mtonga
Santhi Kumaran
Chomora Mikeka
Kayalvizhi Jayavel
Jimmy Nsenga
author_sort Kambombo Mtonga
title Machine Learning-Based Patient Load Prediction and IoT Integrated Intelligent Patient Transfer Systems
title_short Machine Learning-Based Patient Load Prediction and IoT Integrated Intelligent Patient Transfer Systems
title_full Machine Learning-Based Patient Load Prediction and IoT Integrated Intelligent Patient Transfer Systems
title_fullStr Machine Learning-Based Patient Load Prediction and IoT Integrated Intelligent Patient Transfer Systems
title_full_unstemmed Machine Learning-Based Patient Load Prediction and IoT Integrated Intelligent Patient Transfer Systems
title_sort machine learning-based patient load prediction and iot integrated intelligent patient transfer systems
publisher MDPI AG
series Future Internet
issn 1999-5903
publishDate 2019-11-01
description A mismatch between staffing ratios and service demand leads to overcrowding of patients in waiting rooms of health centers. Overcrowding consequently leads to excessive patient waiting times, incomplete preventive service delivery and disgruntled medical staff. Worse, due to the limited patient load that a health center can handle, patients may leave the clinic before the medical examination is complete. It is true that as one health center may be struggling with an excessive patient load, another facility in the vicinity may have a low patient turn out. A centralized hospital management system, where hospitals are able to timely exchange patient load information would allow excess patient load from an overcrowded health center to be re-assigned in a timely way to the nearest health centers. In this paper, a machine learning-based patient load prediction model for forecasting future patient loads is proposed. Given current and historical patient load data as inputs, the model outputs future predicted patient loads. Furthermore, we propose re-assigning excess patient loads to nearby facilities that have minimal load as a way to control overcrowding and reduce the number of patients that leave health facilities without receiving medical care as a result of overcrowding. The re-assigning of patients will imply a need for transportation for the patient to move from one facility to another. To avoid putting a further strain on the already fragmented ambulatory services, we assume the existence of a scheduled bus system and propose an Internet of Things (IoT) integrated smart bus system. The developed IoT system can be tagged on buses and can be queried by patients through representation state transfer application program interfaces (APIs) to provide them with the position of the buses through web app or SMS relative to their origin and destination stop. The back end of the proposed system is based on message queue telemetry transport, which is lightweight, data efficient and scalable, unlike the traditionally used hypertext transfer protocol.
topic deep convolutional neural networks
time series forecast
patient overcrowding
patient load prediction
smart transport
intelligent patient transfer
url https://www.mdpi.com/1999-5903/11/11/236
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