2024
DOI: 10.3389/fgene.2024.1413484
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ScnML models single-cell transcriptome to predict spinal cord neuronal cell status

Lijia Liu,
Yuxuan Huang,
Yuan Zheng
et al.

Abstract: Injuries to the spinal cord nervous system often result in permanent loss of sensory, motor, and autonomic functions. Accurately identifying the cellular state of spinal cord nerves is extremely important and could facilitate the development of new therapeutic and rehabilitative strategies. Existing experimental techniques for identifying the development of spinal cord nerves are both labor-intensive and costly. In this study, we developed a machine learning predictor, ScnML, for predicting subpopulations of s… Show more

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