Literature DB >> 33928008

Comparative performance of extreme learning machine and Hammerstein-Weiner models for modelling the intestinal hyper-motility and secretory inhibitory effects of methanolic leaf extract of Combretumhypopilinum Diels (Combretaceae).

Mubarak Hussaini Ahmad1,2, A G Usman3, S I Abba4,5.   

Abstract

In this article, three data-driven approaches were explored, including two artificial intelligence (AI) based models namely; Extreme Learning Machine (ELM) and Hammerstein-Weiner (HW) models and a trivial linear model namely; multilinear regression (MLR). In this context, the models were developed using the onset of diarrhoea, the total number of wet faeces, total number of faeces, weight of intestinal content (g) and length of the small intestine (cm) as the independent variables. In contrast, distance travelled by charcoal meal (C) and volume of intestinal content (I) were considered as the dependent variables for the prediction of the intestinal hypermotility and secretory inhibitory effects of the methanol leaf extract of Combretum hypopilinum (MECH). Three different performance indicators including; mean absolute percentage error (MAPE), Nash-Sutcliffe efficiency (NSE) and Root mean square error (RMSE) were employed in this research to calculate and determine the performance skills of the models. The obtained results indicated the reliable capability of ELM and HW over MLR model having NSE-values higher than 0.90 in both the calibration and verification stages. The results further demonstrated that, in terms of MAPE and RMSE, ELM and HW models showed higher performance efficiency than the MLR model. Even though HW outperformed the ELM and MLR models in the prediction of I. Whereas, ELM outperformed HW and MLR models in the prediction of C. Overall; the results proved the satisfactory ability of the AI-based models (HW and ELM) for modelling the Intestinal hypermotility and secretory inhibitory effects of MECH.
© The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature 2021.

Entities:  

Keywords:  Combretum hypopilinum; Diarrhoea; Extreme learning machine; Hammerstein–Weiner; Intestinal hypermotility; Methanolic extract

Year:  2021        PMID: 33928008      PMCID: PMC8042099          DOI: 10.1007/s40203-021-00090-1

Source DB:  PubMed          Journal:  In Silico Pharmacol        ISSN: 2193-9616


  10 in total

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Review 3.  Trends in extreme learning machines: a review.

Authors:  Gao Huang; Guang-Bin Huang; Shiji Song; Keyou You
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4.  Shuffling cross-validation-bee algorithm as a new descriptor selection method for retention studies of pesticides in biopartitioning micellar chromatography.

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Authors:  Soo Hyun Park; Paul R Haddad; Mohammad Talebi; Eva Tyteca; Ruth I J Amos; Roman Szucs; John W Dolan; Christopher A Pohl
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Journal:  Sci Total Environ       Date:  2018-08-18       Impact factor: 7.963

Review 7.  An overview of experimental designs in HPLC method development and validation.

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Journal:  J Pharm Biomed Anal       Date:  2017-05-07       Impact factor: 3.935

8.  Burden and aetiology of diarrhoeal disease in infants and young children in developing countries (the Global Enteric Multicenter Study, GEMS): a prospective, case-control study.

Authors:  Karen L Kotloff; James P Nataro; William C Blackwelder; Dilruba Nasrin; Tamer H Farag; Sandra Panchalingam; Yukun Wu; Samba O Sow; Dipika Sur; Robert F Breiman; Abu Sg Faruque; Anita Km Zaidi; Debasish Saha; Pedro L Alonso; Boubou Tamboura; Doh Sanogo; Uma Onwuchekwa; Byomkesh Manna; Thandavarayan Ramamurthy; Suman Kanungo; John B Ochieng; Richard Omore; Joseph O Oundo; Anowar Hossain; Sumon K Das; Shahnawaz Ahmed; Shahida Qureshi; Farheen Quadri; Richard A Adegbola; Martin Antonio; M Jahangir Hossain; Adebayo Akinsola; Inacio Mandomando; Tacilta Nhampossa; Sozinho Acácio; Kousick Biswas; Ciara E O'Reilly; Eric D Mintz; Lynette Y Berkeley; Khitam Muhsen; Halvor Sommerfelt; Roy M Robins-Browne; Myron M Levine
Journal:  Lancet       Date:  2013-05-14       Impact factor: 79.321

9.  Evaluation of antidiarrheal activity of ethanolic extract of Holarrhena antidysenterica seeds in rats.

Authors:  Dushyant Kumar Sharma; Vinod Kumar Gupta; Surendra Kumar; Vivek Joshi; Ravi Shankar Kumar Mandal; A G Bhanu Prakash; Mamta Singh
Journal:  Vet World       Date:  2015-12-11

10.  Antidiarrheal Activity of 80% Methanolic Leaf Extract of Justicia schimperiana.

Authors:  Belay Mekonnen; Assefa Belay Asrie; Zewdu Birhanu Wubneh
Journal:  Evid Based Complement Alternat Med       Date:  2018-02-06       Impact factor: 2.629

  10 in total

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