TY - JOUR
T1 - An intelligent case-based knowledge management system for quality improvement in nursing homes
AU - Choy, K.L.T.
AU - Siu, K.Y.P.
AU - Ho, T.S.G.
AU - Wu, C.H.
AU - Lam, H.Y.
AU - Tang, V.
AU - Tsang, Yung Po
PY - 2018
Y1 - 2018
N2 - Purpose: This paper aims to maintain the high service quality of the long-term care service providers by establishing a knowledge-based system so as to enhance the service quality of nursing homes and the performance of its nursing staff continually. Design/methodology/approach: An intelligent case-based knowledge management system (ICKMS) is developed with the integration of two artificial intelligence techniques, i.e. fuzzy logic and case-based reasoning (CBR). In the system, fuzzy logic is adopted to assess the performance through the analysis of the long-term care services provided, nurse performance and elderly satisfaction, whereas CBR is used to formulate a customized re-training program for quality improvement. A case study is conducted to validate the feasibility of the proposed system. Findings: The empirical findings indicate that the ICKMS helps in identification of those nursing staff who cannot meet the essential service standard. Through the customized re-training program, the performance of the nursing staff can be greatly enhanced, whereas the medical errors and complaints can be considerably reduced. Furthermore, the proposed methodology provides a cost-saving approach in the administrative work. Practical implications: The findings and results of the study facilitate decision-making using the ICKMS for the long-term service providers to improve their performance and service quality by providing a customized re-training program to the nursing staff. Originality/value: This study contributes to establishing a knowledge-based system for the long-term service providers for maintaining the high service quality in the health-care industry.
AB - Purpose: This paper aims to maintain the high service quality of the long-term care service providers by establishing a knowledge-based system so as to enhance the service quality of nursing homes and the performance of its nursing staff continually. Design/methodology/approach: An intelligent case-based knowledge management system (ICKMS) is developed with the integration of two artificial intelligence techniques, i.e. fuzzy logic and case-based reasoning (CBR). In the system, fuzzy logic is adopted to assess the performance through the analysis of the long-term care services provided, nurse performance and elderly satisfaction, whereas CBR is used to formulate a customized re-training program for quality improvement. A case study is conducted to validate the feasibility of the proposed system. Findings: The empirical findings indicate that the ICKMS helps in identification of those nursing staff who cannot meet the essential service standard. Through the customized re-training program, the performance of the nursing staff can be greatly enhanced, whereas the medical errors and complaints can be considerably reduced. Furthermore, the proposed methodology provides a cost-saving approach in the administrative work. Practical implications: The findings and results of the study facilitate decision-making using the ICKMS for the long-term service providers to improve their performance and service quality by providing a customized re-training program to the nursing staff. Originality/value: This study contributes to establishing a knowledge-based system for the long-term service providers for maintaining the high service quality in the health-care industry.
UR - https://hdl.handle.net/1959.7/uws:66306
U2 - 10.1108/VJIKMS-01-2017-0001
DO - 10.1108/VJIKMS-01-2017-0001
M3 - Article
SN - 2059-5891
VL - 48
SP - 103
EP - 121
JO - VINE Journal of Information and Knowledge Management Systems
JF - VINE Journal of Information and Knowledge Management Systems
IS - 1
ER -