TENET: A Machine Learning-Based System for Target Characterization in Signaling Networks

Author(s):  
Huey Eng Chua ◽  
Sourav S. Bhowmick ◽  
Lisa Tucker-Kellogg ◽  
C. Forbes Dewey
2020 ◽  
Vol 17 (2) ◽  
pp. 175-183 ◽  
Author(s):  
Joseph M. Cunningham ◽  
Grigoriy Koytiger ◽  
Peter K. Sorger ◽  
Mohammed AlQuraishi

2020 ◽  
Author(s):  
Andrei S. Rodin ◽  
Grigoriy Gogoshin ◽  
Lei Wang ◽  
Colt Egelston ◽  
Russell C. Rockne ◽  
...  

AbstractCancer immunotherapy, specifically immune checkpoint blockade therapy, has been found to be effective in the treatment of metastatic cancers. However, only a subset of patients with certain cancer types achieve clinical responses. Consequently, elucidating immune system-related pre-treatment biomarkers that are predictive with respect to sustained clinical response is a major research priority. Another research priority is evaluating changes in the immune system before and after treatment in responders and non-responders. Specifically, our group has been studying immune signaling networks as an accurate reflection of the global immune state. Flow cytometry data (FACS, Fluorescence-activated cell sorting) characterizing immune signaling in peripheral blood mononuclear cells (PBMC) from gastroesophageal adenocarcinoma (GEA) patients were used to analyze changes in immune signaling networks in this setting. We developed a novel computational pipeline to perform secondary analyses of FACS data using systems biology / machine learning / information-theoretic techniques and concepts, primarily based on Bayesian network modeling. Application of this novel pipeline resulted in determination of immune markers, combinations / interactions thereof, and corresponding immune cell population types that are associated with clinical responses. Future studies are planned to generalize our analytical approach to different cancer types and corresponding datasets.Author SummaryIt is difficult to predict whether a cancer patient undergoing immunotherapy treatments will respond. As immunotherapy is expensive and may lead to autoimmune toxicities, patient selection is an important issue. One way to gain deeper insight into the underlying processes is to study changes in immune signaling networks during the treatment course. These networks can be modeled, visualized, and quantified using systems biology / machine learning methods, such as Bayesian networks (BNs). Here, we present a BN-based analytical strategy for devising and comparing immune signaling networks, and apply it to data obtained from patients in a gastrointestinal cancer immunotherapy clinical trial. We identify potentially predictive immune biomarkers, and compare and contrast the resulting network models in different groups of patients, before and after therapy. Our analytical strategy generalizes to different cancers and immunotherapy regimens.


Blood ◽  
2018 ◽  
Vol 132 (Supplement 1) ◽  
pp. 469-469
Author(s):  
Yu-Hsiu T. Lin ◽  
Gergory P. Way ◽  
Margarette C. Mariano ◽  
Makeba Marcoulis ◽  
Ian Ferguson ◽  
...  

Abstract Introduction: Multiple myeloma (MM) is a complex disease that requires a sophisticated treatment strategy. Currently, no kinase inhibitors have been approved for MM despite their potential for supplementing current combination therapies. Previous functional studies have explored kinase dependency in MM by either a small molecule inhibitor library (Dhimolea et al. 2014 ASH) or RNA interference (Tiedemann et al. 2010, Blood 115:1594). However, owing to their off-target effects, these approaches are imprecise at dissecting signaling networks driving MM growth and survival. Here, we aim to improve diagnostic and prognostic measures and recommend small molecule-based treatments for MM patients by identifying vulnerable signaling patterns in disease using integrated transcriptome- and phosphoproteome-based predictive models. Methods: We employed two methods for measuring cellular signaling activity within a tumor sample. The first involves an unbiased phosphoproteome profiling of eight human myeloma cell lines (HMCL) in biological triplicates. Cells were lysed and digested with trypsin prior to enrichment for phosphorylated peptides by Fe3+-IMAC. Samples were analyzed on a Thermo Q-Exactive Plus mass spectrometer and data processed in MaxQuant to identify and quantify phosphorylation sites. To infer relative kinase activities, we applied kinase set enrichment analysis (KSEA). Drug screening was performed in 384-well plates with CellTiter-Glo as viability readout as previously described (Lam et al. 2018, Haematologica 103:1218). For transcriptome analysis, we implemented the gene expression-based signaling pathway prediction model called PROGENy (Schubert et al. 2018, Nat Comm. 9:20). We applied PROGENy to RNAseq data on 64 MM cell lines (www.keatslab.org) as well as plasma cells from >1000 patients in the MMRF CoMMpass study (research.themmrf.org). Furthermore, using our recently described approach (Way et al. 2018, Cell Rep. 23:172), we built a machine learning classifier to predict RAS genotype from the transcriptomic profiles of MM patients. A tenth of the data set was withheld for testing while the rest was used to train the multiclass logistic regression classifier with sparse penalty. Results: We measured the KSEA-predicted activities of 297 kinases across eight tested MM cell lines. Initially, we were surprised to find high predicted activity in the Ras signaling pathway for KRAS-codon 12 mutant cell lines but low predicted activity in NRAS-mutant cell lines (Fig. A: AMO1 harbors a non-canonical KRAS mutation at codon 146). We further explored this finding with our machine learning-based Ras classifier built on transcriptional data in the CoMMpass study. We identified 311, 405, and 390 genes whose expressions are characteristic of the WT RAS, KRAS mutant, and NRAS mutant genotype, respectively, with surprisingly limited overlap between KRAS and NRAS transcriptional signatures. Building on our KSEA analysis, we next performed a kinase inhibitor screen to evaluate the predictive value of the inferred kinase activities for drug sensitivity. Of 12 screened compounds, mTOR inhibitor INK128 displayed the strongest correlation between drug response and predicted kinase activity. Furthermore, we probed the potential of using pathway activity signatures as prognostic and therapeutic markers. To this end, we applied PROGENy to RNAseq data derived from CoMMpass patients and found that the MAPK signature stratifies patient survival with statistical significance, while the presence and absence of RAS mutations carry no prognostic value (Fig. B). Finally, by integrating RNAseq and drug screen data from the Cancer Dependency Map, we identified three compounds whose inhibitory effects strongly correlate with MAPK activity scores while no significant difference in drug sensitivity was detected between RAS WT and mutants. Conclusion: Both phosphoproteomics and a machine learning-based transcriptional classifier highlight a striking difference in the pattern of signaling between NRAS and KRAS mutants. In addition, we have demonstrated that PROGENy scores possess clinical value for prognostic and therapeutic use based on patient transcriptome data. Taken together, uncovering the cellular signaling networks dysregulated in MM may lead to improved precision medicine, particularly in stratifying patients who may benefit most from kinase inhibitor therapy. Figure. Figure. Disclosures Wiita: TeneoBio: Research Funding; Sutro Biopharma: Research Funding.


2020 ◽  
Vol 43 ◽  
Author(s):  
Myrthe Faber

Abstract Gilead et al. state that abstraction supports mental travel, and that mental travel critically relies on abstraction. I propose an important addition to this theoretical framework, namely that mental travel might also support abstraction. Specifically, I argue that spontaneous mental travel (mind wandering), much like data augmentation in machine learning, provides variability in mental content and context necessary for abstraction.


2020 ◽  
Author(s):  
Mohammed J. Zaki ◽  
Wagner Meira, Jr
Keyword(s):  

2020 ◽  
Author(s):  
Marc Peter Deisenroth ◽  
A. Aldo Faisal ◽  
Cheng Soon Ong
Keyword(s):  

Author(s):  
Lorenza Saitta ◽  
Attilio Giordana ◽  
Antoine Cornuejols

Author(s):  
Shai Shalev-Shwartz ◽  
Shai Ben-David
Keyword(s):  

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