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In particular, the work obtained the required approval of the CEIm (Research Ethical Committee) of the Hospital General Universitari de Castell\u00f3, in session 1\/2021, where the Institutional Review Board (IRB) agreed to waive the informed consent requirement to participate, according to the BPC regulations (CPMP\/ICH\/135\/95) and Spanish legislation 223\/2004. All image data were acquired from ordinary diagnosis processes from patients\u2019 kidney tissue samples, which were anonymized to protect the privacy and confidentiality of the patients. 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