Publications by authors named "Dongqing Xie"

Article Synopsis
  • The study explores how the traditional Chinese medicine HuangQiSiJunZi Decoction (HQSJZD) may treat triple-negative breast cancer (TNBC) by examining its chemical components and their action targets using advanced bioinformatics tools.
  • Key findings identified 256 potential targets for HQSJZD and 16 significant hub genes affecting TNBC, including FOS, which also plays a role in patient survival predictions.
  • The research highlights the involvement of immune cells in TNBC while validating these findings through various analyses, supporting the potential effectiveness of HQSJZD in cancer treatment.
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Accurately targeting metal ion-binding sites solely from protein sequences is valuable for both basic experimental biology and drug discovery studies. Although considerable progress has been made, metal ion-binding site prediction is still a challenging problem due to the small size and high versatility of the metal ions. In this paper, we develop a ligand-specific predictor called MIonSite for predicting metal ion-binding sites from protein sequences.

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In a number of biological studies, the raw gene expression data are not usually published due to different causes, such as data privacy and patent rights. Instead, significant gene lists with fold change values are usually provided in most studies. However, due to variations in data sources and profiling conditions, only a small number of common significant genes could be found among similar studies.

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Global transcriptional analyses have been performed with human embryonic stem cells (hESC) derived cardiomyocytes (CMs) to identify molecules and pathways important for human CM differentiation, but variations in culture and profiling conditions have led to greatly divergent results among different studies. Consensus investigation to identify genes and gene sets enriched in multiple studies is important for revealing differential gene expression intrinsic to human CM differentiation independent of the above variables, but reliable methods of conducting such comparison are lacking. We examined differential gene expression between hESC and hESC-CMs from multiple microarray studies.

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Feature selection is widely established as one of the fundamental computational techniques in mining microarray data. Due to the lack of categorized information in practice, unsupervised feature selection is more practically important but correspondingly more difficult. Motivated by the cluster ensemble techniques, which combine multiple clustering solutions into a consensus solution of higher accuracy and stability, recent efforts in unsupervised feature selection proposed to use these consensus solutions as oracles.

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