1 research outputs found
STW-MD: A Novel Spatio-Temporal Weighting and Multi-Step Decision Tree Method for Considering Spatial Heterogeneity in Brain Gene Expression Data
Motivation: Gene expression during brain development or abnormal development
is a biological process that is highly dynamic in spatio and temporal. Due to
the lack of comprehensive integration of spatial and temporal dimensions of
brain gene expression data, previous studies have mainly focused on individual
brain regions or a certain developmental stage. Our motivation is to address
this gap by incorporating spatio-temporal information to gain a more complete
understanding of the mechanisms underlying brain development or disorders
associated with abnormal brain development, such as Alzheimer's disease (AD),
and to identify potential determinants of response.
Results: In this study, we propose a novel two-step framework based on
spatial-temporal information weighting and multi-step decision trees. This
framework can effectively exploit the spatial similarity and temporal
dependence between different stages and different brain regions, and facilitate
differential gene analysis in brain regions with high heterogeneity. We focus
on two datasets: the AD dataset, which includes gene expression data from
early, middle, and late stages, and the brain development dataset, spanning
fetal development to adulthood. Our findings highlight the advantages of the
proposed framework in discovering gene classes and elucidating their impact on
brain development and AD progression across diverse brain regions and stages.
These findings align with existing studies and provide insights into the
processes of normal and abnormal brain development.
Availability: The code of STW-MD is available at
https://github.com/tsnm1/STW-MD.Comment: 11 pages, 6 figure