Publications by authors named "S DANZIGER"

Article Synopsis
  • Immunochemotherapy is currently the primary treatment for newly diagnosed diffuse large B-cell lymphoma (ndDLBCL), but it's ineffective for some patients, prompting research into better prognostic methods.
  • By analyzing transcriptomic data from a large group of patients, researchers identified seven distinct clusters of ndDLBCL, with one specific cluster (A7) linked to poorer outcomes due to characteristics like low immune cell presence and high MYC expression.
  • The study also explores how certain drugs, like lenalidomide, may improve treatment for the high-risk A7 cluster by enhancing T-cell movement into tumors and the expression of key tumor markers, while identifying TCF4 as a crucial factor in MYC biology for this group.
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Despite recent advancements in the treatment of multiple myeloma (MM), nearly all patients ultimately relapse and many become refractory to multiple lines of therapies. Therefore, we not only need the ability to predict which patients are at high risk for disease progression but also a means to understand the mechanisms underlying their risk. Here, we report a transcriptional regulatory network (TRN) for MM inferred from cross-sectional multi-omics data from 881 patients that predicts how 124 chromosomal abnormalities and somatic mutations causally perturb 392 transcription regulators of 8549 genes to manifest in distinct clinical phenotypes and outcomes.

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Many of the gene regulatory processes of Plasmodium falciparum, the deadliest malaria parasite, remain poorly understood. To develop a comprehensive guide for exploring this organism's gene regulatory network, we generated a systems-level model of P. falciparum gene regulation using a well-validated, machine-learning approach for predicting interactions between transcription regulators and their targets.

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Background: The tumor microenvironment (TME) is increasingly appreciated as an important determinant of cancer outcome, including in multiple myeloma (MM). However, most myeloma microenvironment studies have been based on bone marrow (BM) aspirates, which often do not fully reflect the cellular content of BM tissue itself. To address this limitation in myeloma research, we systematically characterized the whole bone marrow (WBM) microenvironment during premalignant, baseline, on treatment, and post-treatment phases.

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Background: Mechanistic models, when combined with pertinent data, can improve our knowledge regarding important molecular and cellular mechanisms found in cancer. These models make the prediction of tissue-level response to drug treatment possible, which can lead to new therapies and improved patient outcomes. Here we present a data-driven multiscale modeling framework to study molecular interactions between cancer, stromal, and immune cells found in the tumor microenvironment.

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