Machine learning identifies experimental brain metastasis subtypes based on their influence on neural circuits

机器学习根据对神经回路的影响识别实验性脑转移亚型

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作者:Alberto Sanchez-Aguilera, Mariam Masmudi-Martín, Andrea Navas-Olive, Patricia Baena, Carolina Hernández-Oliver, Neibla Priego, Lluís Cordón-Barris, Laura Alvaro-Espinosa, Santiago García, Sonia Martínez, Miguel Lafarga; RENACER; Michael Z Lin, Fátima Al-Shahrour, Liset Menendez de la Prida, Manuel V

Abstract

A high percentage of patients with brain metastases frequently develop neurocognitive symptoms; however, understanding how brain metastasis co-opts the function of neuronal circuits beyond a tumor mass effect remains unknown. We report a comprehensive multidimensional modeling of brain functional analyses in the context of brain metastasis. By testing different preclinical models of brain metastasis from various primary sources and oncogenic profiles, we dissociated the heterogeneous impact on local field potential oscillatory activity from cortical and hippocampal areas that we detected from the homogeneous inter-model tumor size or glial response. In contrast, we report a potential underlying molecular program responsible for impairing neuronal crosstalk by scoring the transcriptomic and mutational profiles in a model-specific manner. Additionally, measurement of various brain activity readouts matched with machine learning strategies confirmed model-specific alterations that could help predict the presence and subtype of metastasis.

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