Displaying all 5 publications

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  1. Isa WY, Daud KM
    Intern. Med., 2011;50(16):1765-8.
    PMID: 21841342
    We report a case of renal tubular acidosis (RTA) in a patient with HIV infection and AIDS. A 33-year-old HIV-positive man with Hepatitis C and tuberculous lymphadenitis was admitted due to deep venous thrombosis and generalized muscle weakness. He had never received anti-retroviral medication. The blood gases and serum electrolytes showed hyperchloremic normal anion gap metabolic acidosis with severe hypokalemia and alkaline urine. Diagnosis of distal RTA was made. His renal function and serum globulin level remained within normal range throughout his illness. Clinicians should be alert to renal tubular disorders in HIV/AIDS patients even in the absence of anti-retroviral therapy or hypergammaglobulinemic state.
  2. Cao MY, Zainudin S, Daud KM
    BMC Genomics, 2024 May 13;25(1):466.
    PMID: 38741045 DOI: 10.1186/s12864-024-10361-8
    BACKGROUND: Protein-protein interactions (PPIs) hold significant importance in biology, with precise PPI prediction as a pivotal factor in comprehending cellular processes and facilitating drug design. However, experimental determination of PPIs is laborious, time-consuming, and often constrained by technical limitations.

    METHODS: We introduce a new node representation method based on initial information fusion, called FFANE, which amalgamates PPI networks and protein sequence data to enhance the precision of PPIs' prediction. A Gaussian kernel similarity matrix is initially established by leveraging protein structural resemblances. Concurrently, protein sequence similarities are gauged using the Levenshtein distance, enabling the capture of diverse protein attributes. Subsequently, to construct an initial information matrix, these two feature matrices are merged by employing weighted fusion to achieve an organic amalgamation of structural and sequence details. To gain a more profound understanding of the amalgamated features, a Stacked Autoencoder (SAE) is employed for encoding learning, thereby yielding more representative feature representations. Ultimately, classification models are trained to predict PPIs by using the well-learned fusion feature.

    RESULTS: When employing 5-fold cross-validation experiments on SVM, our proposed method achieved average accuracies of 94.28%, 97.69%, and 84.05% in terms of Saccharomyces cerevisiae, Homo sapiens, and Helicobacter pylori datasets, respectively.

    CONCLUSION: Experimental findings across various authentic datasets validate the efficacy and superiority of this fusion feature representation approach, underscoring its potential value in bioinformatics.

  3. Othman SK, Daud KM, Othman NH
    Malays J Med Sci, 2011 Oct;18(4):88-90.
    PMID: 22589678
    Kimura's disease is a rare condition and typically presents as non-tender subcutaneous swellings in the head and neck region, usually in the pre-auricular and submandibular areas. It is associated with lymphadenopathy (both local and distal), marked peripheral eosinophilia, and an elevated IgE level. It can easily be mistaken for a malignant disorder. Fine needle aspiration can be misleading, and a diagnosis is established only by histopathological examination. Renal involvement, which may affect up to 60% of patients, is the only systemic manifestation. We report a case of Kimura's disease in a Malay patient who was associated with steroid-responsive nephrotic syndrome.
  4. Munisamy S, Daud KM, Mokhtar SS, Rasool AH
    Microcirculation, 2016 Jan;23(1):53-61.
    PMID: 26749451 DOI: 10.1111/micc.12256
    To determine the effects of six months alfacalcidol on microvascular endothelial function, arterial stiffness, and BP in DN patients.
  5. Daud KM, Mohamad MS, Zakaria Z, Hassan R, Shah ZA, Deris S, et al.
    Comput Biol Med, 2019 10;113:103390.
    PMID: 31450056 DOI: 10.1016/j.compbiomed.2019.103390
    Metabolic engineering is defined as improving the cellular activities of an organism by manipulating the metabolic, signal or regulatory network. In silico reaction knockout simulation is one of the techniques applied to analyse the effects of genetic perturbations on metabolite production. Many methods consider growth coupling as the objective function, whereby it searches for mutants that maximise the growth and production rate. However, the final goal is to increase the production rate. Furthermore, they produce one single solution, though in reality, cells do not focus on one objective and they need to consider various different competing objectives. In this work, a method, termed ndsDSAFBA (non-dominated sorting Differential Search Algorithm and Flux Balance Analysis), has been developed to find the reaction knockouts involved in maximising the production rate and growth rate of the mutant, by incorporating Pareto dominance concepts. The proposed ndsDSAFBA method was validated using three genome-scale metabolic models. We obtained a set of non-dominated solutions, with each solution representing a different mutant strain. The results obtained were compared with the single objective optimisation (SOO) and multi-objective optimisation (MOO) methods. The results demonstrate that ndsDSAFBA is better than the other methods in terms of production rate and growth rate.
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