Series Anomaly Inference with Nonlinear Markov to Circumvent Walking a Tightrope
ANIM is a novel probabilistic module based on Nonlinear Markov for the unsupervised time series anomaly inference.
ANIM is a novel probabilistic module based on Nonlinear Markov for the unsupervised time series anomaly inference.
MEATRD is a multimodal anomaly detection method that integrates histology image and Spatial Transcriptomics gene expression data.
ACSleuth is a GAN-based generative model for domain adaptive and fine-grained anomaly detection in the single-cell/tabular data.
STANDS is a GAN-based multi-task deep learning framework, which can detect and dissect anomalous tissue domains (DDATD) with Spatial Transcriptomics or scRNA-seq.
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We discussed how to detect anomalous samples in single-cell omics data with generative models and introduced our team’s work, ACSleuth.
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We presented our team’s work, ACSleuth, discussing in detail its implementation specifics, applicable tasks, and the limitations of the algorithm.
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We introduced multimodal machine learning technologies for multi-omics data, and discussed how to discover rare diseases with deep learning methods.
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We discussed how to detect anomalous samples in multi-omics data with generative models and introduced our team’s work, ACSleuth and STANDS.
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We formally introduced our work, Domain Adaptive and Fine-grained Anomaly Detection for Single-cell Sequencing Data and Beyond.