Showing 301 - 320 results of 967 for search '(((pin OR pick) OR fine) OR (((aina OR (anne OR anna)) OR ((cheng OR spent) OR lingao)) OR ping))', query time: 0.08s Refine Results
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    Seeing patient longer at each consultation will improve their knowledge on diabetes but may not necessarily improve their diabetic control and metabolic parameters by Shahar , Mohammad Arif, Mohd Rafee, Adilah Rafi'ah, Mohamad Hazim, Husna, Saiful Bahri, Aina Sharleena, Mohamad, Rizman, Tuhiran, Mohd Fadzil

    Published 2014
    “…Objectives: To determine the association between consultation-time spent with doctors and patients’ knowledge, attitude and practice (KAP) on diabetic management, HbA1C and other metabolic parameters. …”
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    Quality prediction and classifcation of resistance spot weld using artifcial neural network with open‑sourced, self‑executable andGUI‑based application tool Q‑Check by Abd Halim, Suhaila, Yupiter H. P. Manurung, Yupiter H. P. Manurung, Raziq, Muhamad Aiman, ChengYee Low, ChengYee Low, Rohmad, Muhammad Saufy, John R. C. Dizon, John R. C. Dizon, Vladimir S. Kachinskyi, Vladimir S. Kachinskyi

    Published 2023
    “…Results showed that this low-cost application tool Q-Check based on ANN models can predict with 80% training and 20% test set on TSLBC with an accuracy of 87.220%, 92.865% and 93.670% for GD, SGD and LM algorithms respectively while on WQC 62.5% for GD and 75% for both SGD and LM. …”
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  20. 320

    Quality prediction and classifcation of resistance spot weld using artifcial neural network with open‑sourced, self‑executable andGUI‑based application tool Q‑Check by Abd Halim, Suhaila, Yupiter H. P. Manurung, Yupiter H. P. Manurung, Raziq, MuhamadAiman, ChengYee Low, ChengYee Low, Rohmad, Muhammad Saufy, John R. C. Dizon, John R. C. Dizon, Vladimir S. Kachinskyi, Vladimir S. Kachinskyi

    Published 2023
    “…Results showed that this low-cost application tool Q-Check based on ANN models can predict with 80% training and 20% test set on TSLBC with an accuracy of 87.220%, 92.865% and 93.670% for GD, SGD and LM algorithms respectively while on WQC 62.5% for GD and 75% for both SGD and LM. …”
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    Article