Feasibility of an intensive control insulin-nutrition glucose model ‘icing’ with Malaysian critically-ill patient

A clinically verified patient-specific glucose-insulin metabolic model known as ICING is used to account for time-varying insulin sensitivity. ICING was developed and validated from critically-ill patients with various medical conditions in the intensive care unit in Christchurch Hospital, New Zea...

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Main Authors: Abdul Razak, Normy Norfiza, Ahamad, Nurhamim, Suhaimi, Fatanah M., Jamaludin, Ummu, Md Ralib, Azrina
Format: Article
Language:English
English
Published: Innovare Academic Sciences Pvt Ltd 2016
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Online Access:http://irep.iium.edu.my/52419/1/52419.pdf
http://irep.iium.edu.my/52419/2/52419-Feasibility%20of%20an%20intensive%20control%20insulin-nutrition%20glucose%20model%20%E2%80%98ICING%E2%80%99_SCOPUS.pdf
http://irep.iium.edu.my/52419/
http://innovareacademics.in/journals/index.php/ijpps/article/view/15218/6988
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spelling my.iium.irep.524192017-03-10T19:46:01Z http://irep.iium.edu.my/52419/ Feasibility of an intensive control insulin-nutrition glucose model ‘icing’ with Malaysian critically-ill patient Abdul Razak, Normy Norfiza Ahamad, Nurhamim Suhaimi, Fatanah M. Jamaludin, Ummu Md Ralib, Azrina R Medicine (General) A clinically verified patient-specific glucose-insulin metabolic model known as ICING is used to account for time-varying insulin sensitivity. ICING was developed and validated from critically-ill patients with various medical conditions in the intensive care unit in Christchurch Hospital, New Zealand. Hence, it is interesting and vital to analyse the compatibility of the model once fitted to Malaysian critically-ill data. Results were assessed in terms of percentage of model-fit error, both by cohort and per-patient analysis. The ICING model accomplished median fitting error of<1% over data from 63 patients. Most importantly, the median per-patients is at a low fitting error of 0.34% and per cohort is 0.35%. These results provide a promising avenue for near future simulations of developing tight glycaemic control protocol in the Malaysian intensive care unit. Innovare Academic Sciences Pvt Ltd 2016 Article REM application/pdf en http://irep.iium.edu.my/52419/1/52419.pdf application/pdf en http://irep.iium.edu.my/52419/2/52419-Feasibility%20of%20an%20intensive%20control%20insulin-nutrition%20glucose%20model%20%E2%80%98ICING%E2%80%99_SCOPUS.pdf Abdul Razak, Normy Norfiza and Ahamad, Nurhamim and Suhaimi, Fatanah M. and Jamaludin, Ummu and Md Ralib, Azrina (2016) Feasibility of an intensive control insulin-nutrition glucose model ‘icing’ with Malaysian critically-ill patient. International Journal of Pharmacy and Pharmaceutical Sciences, 8 (Supplement 2). pp. 40-42. http://innovareacademics.in/journals/index.php/ijpps/article/view/15218/6988 10.22159/ijpps.2016v8s2.15218
institution Universiti Islam Antarabangsa Malaysia
building IIUM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider International Islamic University Malaysia
content_source IIUM Repository (IREP)
url_provider http://irep.iium.edu.my/
language English
English
topic R Medicine (General)
spellingShingle R Medicine (General)
Abdul Razak, Normy Norfiza
Ahamad, Nurhamim
Suhaimi, Fatanah M.
Jamaludin, Ummu
Md Ralib, Azrina
Feasibility of an intensive control insulin-nutrition glucose model ‘icing’ with Malaysian critically-ill patient
description A clinically verified patient-specific glucose-insulin metabolic model known as ICING is used to account for time-varying insulin sensitivity. ICING was developed and validated from critically-ill patients with various medical conditions in the intensive care unit in Christchurch Hospital, New Zealand. Hence, it is interesting and vital to analyse the compatibility of the model once fitted to Malaysian critically-ill data. Results were assessed in terms of percentage of model-fit error, both by cohort and per-patient analysis. The ICING model accomplished median fitting error of<1% over data from 63 patients. Most importantly, the median per-patients is at a low fitting error of 0.34% and per cohort is 0.35%. These results provide a promising avenue for near future simulations of developing tight glycaemic control protocol in the Malaysian intensive care unit.
format Article
author Abdul Razak, Normy Norfiza
Ahamad, Nurhamim
Suhaimi, Fatanah M.
Jamaludin, Ummu
Md Ralib, Azrina
author_facet Abdul Razak, Normy Norfiza
Ahamad, Nurhamim
Suhaimi, Fatanah M.
Jamaludin, Ummu
Md Ralib, Azrina
author_sort Abdul Razak, Normy Norfiza
title Feasibility of an intensive control insulin-nutrition glucose model ‘icing’ with Malaysian critically-ill patient
title_short Feasibility of an intensive control insulin-nutrition glucose model ‘icing’ with Malaysian critically-ill patient
title_full Feasibility of an intensive control insulin-nutrition glucose model ‘icing’ with Malaysian critically-ill patient
title_fullStr Feasibility of an intensive control insulin-nutrition glucose model ‘icing’ with Malaysian critically-ill patient
title_full_unstemmed Feasibility of an intensive control insulin-nutrition glucose model ‘icing’ with Malaysian critically-ill patient
title_sort feasibility of an intensive control insulin-nutrition glucose model ‘icing’ with malaysian critically-ill patient
publisher Innovare Academic Sciences Pvt Ltd
publishDate 2016
url http://irep.iium.edu.my/52419/1/52419.pdf
http://irep.iium.edu.my/52419/2/52419-Feasibility%20of%20an%20intensive%20control%20insulin-nutrition%20glucose%20model%20%E2%80%98ICING%E2%80%99_SCOPUS.pdf
http://irep.iium.edu.my/52419/
http://innovareacademics.in/journals/index.php/ijpps/article/view/15218/6988
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