8 research outputs found

    Statistical analysis of waiting time of patients by queuing techniques: case study of large hospital in Pakistan

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    [EN] The purpose of this empirical research was to analyze the comfortable waiting time (CWT) of patients at the outpatient department (OPD) of Gastrology of ABC hospital of Karachi. It is based on the analysis of CWT of patients who were being served at the OPD of Gastrology of ABC hospital of Karachi. The data was collected by the help of questionnaire. Altogether 250 questionnaires were distributed among the patients, 210 of them were collected back and 10 of them were incompletely filled. Data was analysed in the statistical package for social sciences (SPSS) version 22. Data analysis included frequency distribution of various demographics;stratification tables were made for the comparison of CWT across various demographics. Results indicated that more females (old aged) had greater CWT in the comparison of males. It is found that the mean CWT of patients decreased with decreasing age, increasing OPD visiting time and increasing income. It is also found that he mean CWT for the patients from Afghanistan was greater than the patients from other regions i.e. Baluchistan, interior Sindh and Karachi. The authors highlighted that when patients arrive at the hospital and wait for their service, in this scenario, waiting cost is associated with their waiting time; since it is the matter of cost, thus it should be known to the hospital that if patients are made to wait longer, it can lead to the customer dissatisfaction. In this regard, analysis of comfortable waiting time of patients was extremely needed. Since, Karachi is the biggest city of Pakistan and targeted hospital is one the biggest private hospitals of Karachi and in the analysis of this paper. Only 200 patients were approached for data collection which is the main limitation of the paper. In future, the researchers should also focus on the same OPD for more responses and at the same time, other departments can also be targeted for conclude better and precise results. The authors have tried to focus on the CWT of patients so that the waiting capacity of patients could be highlighted. At the same time, detailed analysis was conducted across demographics so that their influence on CWT could be analysed. Authors of this research paper thank the management committee of ABC private hospital of Karachi for allowing us to collect the data and we are also thankful to the patients who cooperated in filling the questionnaires.Kalwar, MA.; Memon, MS.; Khan, MA.; Tanwari, A. (2021). Statistical analysis of waiting time of patients by queuing techniques: case study of large hospital in Pakistan. 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    Prediction of tensile strength of polyester/cotton blended woven fabrics

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    243-249models have been developed for the prediction of tensile strength of polyester/cotton (52:48) blended woven fabrics. The models have been developed based on the empirical data obtained from carefully developed 234 fabric samples with different constructions using 15, 20 and 25 tex yarns in warp and weft. The prediction ability and accuracy of the developed models are assessed by correlation analysis of the predicted and actual warp and weft fabric strip-strength values of another set of 36 fabric samples. The results show a very strong ability and accuracy of the prediction models

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