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This study also complies with the \u201cEthical Guidelines for Medical and Health Research Involving Human Subjects\u201d by Japanese Ministry of Health, Labour, and Welfare (MHLW). The study was approved by the Institutional Review Board (IRB) of Ehime University Hospital (Approval No: 2104006) and was performed in line with the principles of the Declaration of Helsinki. The study information was described on the hospital and laboratory website, and participants were provided with the opportunity to opt out. 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