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The authors declare the following financial interests\/personal relationships which may be considered as potential competing interests:","order":2,"name":"Ethics","group":{"name":"EthicsHeading","label":"Competing interests"}},{"value":"We, the authors, confirm that the submitted manuscript is original, has not been published previously, and is not under consideration for publication elsewhere. All authors have contributed substantially to the research and writing of the manuscript, and all have approved the final version for submission to Network Modeling Analysis in Health Informatics and Bioinformatics. In accordance with Springer\u2019s ethical responsibilities for authors: (1) The manuscript does not contain any instances of plagiarism, data fabrication, or data manipulation. (2) All relevant sources have been appropriately cited. (3) The research doesn\u2019t involve human participants or personal data. Public dataset was used. 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