Machine learning-driven flavoromics: Decoding stage-specific volatile compound dynamics and sensory deterioration in stored infant formula
Jianfeng Wang(Beijing Technology and Business University), Nasi Ai(Beijing Technology and Business University), Lunaike Zhao(Beijing Technology and Business University), Shuyuan Xue(Beijing Technology and Business University), Baoguo Sun(Beijing Technology and Business University), Weizhe Wang(Beijing Technology and Business University), Yanmei Xi(Beijing Technology and Business University), Mengyuan Yang(Beijing Technology and Business University), Yufang Su(Hohhot Minzu College)
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