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For the PROMISE dataset, local or central IRBs approved the study at each site; Each patient was provided with oral and written information and signed a declaration of informed consent [\n                      \n                      ]. Finally, both the PROMISE and CATHGEN studies that generated the datasets we used are in compliance with the Helsinki Declaration. As mentioned, our study worked with the de-identified datasets provided by the PROMISE and CATHGEN studies and adhered to the Declaration of Helsinki.","order":2,"name":"Ethics","group":{"name":"EthicsHeading","label":"Ethics approval and consent to participate"}},{"value":"Not applicable.","order":3,"name":"Ethics","group":{"name":"EthicsHeading","label":"Consent for publication"}},{"value":"The authors declare no competing interests.","order":4,"name":"Ethics","group":{"name":"EthicsHeading","label":"Competing interests"}}],"article-number":"423"}}