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computational biology

Transcriptional Response of SK-N-AS Cells to Methamidophos

arXiv:1908.03841

summary

The study measures how SK‑N‑AS neuroblastoma cells change their gene expression over time after exposure to the pesticide methamidophos, using statistical analysis and machine learning methods to detect anomalous transcripts and infer causal networks.

Abstract

Transcriptomics response of SK-N-AS cells to methamidophos (an acetylcholine esterase inhibitor) exposure was measured at 10 time points between 0.5 and 48 h. The data was analyzed using a combination of traditional statistical methods and novel machine learning algorithms for detecting anomalous behavior and infer causal relations between time profiles. We identified several processes that appeared to be upregulated in cells treated with methamidophos including: unfolded protein response, response to cAMP, calcium ion response, and cell-cell signaling. The data confirmed the expected consequence of acetylcholine buildup. In addition, transcripts with potentially key roles were identified and causal networks relating these transcripts were inferred using two different computational methods: Siamese convolutional networks and time warp causal inference. Two types of anomaly detection algorithms, one based on Autoencoders and the other one based on Generative Adversarial Networks (GANs), were applied to narrow down the set of relevant transcripts.

Topics & keywords

#transcriptomics#toxicology#machine learning#anomaly detection#causal inference#neuroblastomamethamidophosSK-N-ASgene expression time seriesSiamese convolutional networkautoencoderGANtime warp causal inferenceunfolded protein response