1,311 research outputs found
Network analysis of differential Ras isoform mutation effects on intestinal epithelial responses to TNF-α
Tumor necrosis factor alpha (TNF-α) is an inflammatory cytokine that can elicit distinct cellular behaviors under different molecular contexts. Mitogen activated protein kinase (MAPK) pathways, especially the extracellular signal-regulated kinase (Erk) pathway, help to integrate influences from the environmental context, and therefore modulate the phenotypic effect of TNF-α exposure. To test how variations in flux through the Erk pathway modulate TNF-α-elicited phenotypes in a complex physiological environment, we exposed mice with different Ras mutations (K-Ras activation, N-Ras activation, and N-Ras ablation) to TNF-α and observed phenotypic and signaling changes in the intestinal epithelium. Hyperactivation of Mek1, an Erk kinase, was observed in the intestine of mice with K-Ras activation and, surprisingly, in N-Ras null mice. Nevertheless, these similar Mek1 outputs did not give rise to the same phenotype, as N-Ras null intestine was hypersensitive to TNF-α-induced intestinal cell death while K-Ras mutant intestine was not. A systems biology approach applied to sample the network state revealed that the signaling contexts presented by these two Ras isoform mutations were different. Consistent with our experimental data, N-Ras ablation induced a signaling network state that was mathematically predicted to be pro-death, while K-Ras activation did not. Further modeling by constrained Fuzzy Logic (cFL) revealed that N-Ras and K-Ras activate the signaling network with different downstream distributions and dynamics, with N-Ras effects being more transient and diverted more towards PI3K-Akt signaling and K-Ras effects being more sustained and broadly activating many pathways. Our study highlights the necessity to consider both environmental and genomic contexts of signaling pathway activation in dictating phenotypic responses, and demonstrates how modeling can provide insight into complex in vivo biological mechanisms, such as the complex interplay between K-Ras and N-Ras in their downstream effects.National Institute of General Medical Sciences (U.S.) (Grant R01-GM088827)National Cancer Institute (U.S.) (U54-CA112967)United States. Army Research Office (Institute for Collaborative Biotechnologies Grant W911NF-09-D-000
In Vivo Systems Analysis Identifies Spatial and Temporal Aspects of the Modulation of TNF-α-Induced Apoptosis and Proliferation by MAPKs
Cellular responses to external stimuli depend on dynamic features of multipathway network signaling; thus, cell behavior is influenced in a complex manner by the environment and by intrinsic properties. Methods of multivariate systems analysis have provided an understanding of these convoluted effects, but only for relatively simplified examples in vitro. To determine whether such approaches could be successfully used in vivo, we analyzed the signaling network that determines the response of intestinal epithelial cells to tumor necrosis factor–α (TNF-α). We built data-driven, partial least-squares discriminant analysis (PLSDA) models based on signaling, apoptotic, and proliferative responses in the mouse small intestinal epithelium after systemic exposure to TNF-α. The extracellular signal–regulated kinase (ERK) signaling axis was a critical modulator of the temporal variation in apoptosis at different doses of TNF-α and of the spatial variation in proliferation in distinct intestinal regions. Inhibition of MEK, a mitogen-activated protein kinase kinase upstream of ERK, altered the signaling network and changed the temporal and spatial phenotypes consistent with model predictions. Our results demonstrate the dynamic, adaptive nature of in vivo signaling networks and identify natural, tissue-level variation in responses that can be deconvoluted only with quantitative, multivariate computational modeling. This study lays a foundation for the use of systems-based approaches to understand how dysregulation of the cellular network state underlies complex diseases.National Institute of General Medical Sciences (U.S.) (Grant R01-GM088827)National Cancer Institute (U.S.) (Grant U54-CA112967
Multi-Scale In Vivo Systems Analysis Reveals the Influence of Immune Cells on TNF-α-Induced Apoptosis in the Intestinal Epithelium
Intestinal epithelial cells exist within a complex environment that affects how they interpret and respond to stimuli. We have applied a multi-scale in vivo systems approach to understand how intestinal immune cells communicate with epithelial cells to regulate responses to inflammatory signals. Multivariate modeling analysis of a large dataset composed of phospho-signals, cytokines, and immune cell populations within the intestine revealed an intimate relationship between immune cells and the epithelial response to TNF-α. Ablation of lymphocytes in the intestine prompted a decrease in the expression of MCP-1, which in turn increased the steady state number of intestinal plasmacytoid dendritic cells (pDCs). This change in the immune compartment affected the intestinal cytokine milieu and subsequent epithelial cell signaling network, with cells becoming hypersensitive to TNF-α-induced apoptosis in a way that could be predicted by mathematical modeling. In summary, we have uncovered a novel cellular network that regulates the response of intestinal epithelial cells to inflammatory stimuli in an in vivo setting
Feasibility of Universal Anomaly Detection without Knowing the Abnormality in Medical Images
Many anomaly detection approaches, especially deep learning methods, have
been recently developed to identify abnormal image morphology by only employing
normal images during training. Unfortunately, many prior anomaly detection
methods were optimized for a specific "known" abnormality (e.g., brain tumor,
bone fraction, cell types). Moreover, even though only the normal images were
used in the training process, the abnormal images were often employed during
the validation process (e.g., epoch selection, hyper-parameter tuning), which
might leak the supposed ``unknown" abnormality unintentionally. In this study,
we investigated these two essential aspects regarding universal anomaly
detection in medical images by (1) comparing various anomaly detection methods
across four medical datasets, (2) investigating the inevitable but often
neglected issues on how to unbiasedly select the optimal anomaly detection
model during the validation phase using only normal images, and (3) proposing a
simple decision-level ensemble method to leverage the advantage of different
kinds of anomaly detection without knowing the abnormality. The results of our
experiments indicate that none of the evaluated methods consistently achieved
the best performance across all datasets. Our proposed method enhanced the
robustness of performance in general (average AUC 0.956)
Cross-scale Multi-instance Learning for Pathological Image Diagnosis
Analyzing high resolution whole slide images (WSIs) with regard to
information across multiple scales poses a significant challenge in digital
pathology. Multi-instance learning (MIL) is a common solution for working with
high resolution images by classifying bags of objects (i.e. sets of smaller
image patches). However, such processing is typically performed at a single
scale (e.g., 20x magnification) of WSIs, disregarding the vital inter-scale
information that is key to diagnoses by human pathologists. In this study, we
propose a novel cross-scale MIL algorithm to explicitly aggregate inter-scale
relationships into a single MIL network for pathological image diagnosis. The
contribution of this paper is three-fold: (1) A novel cross-scale MIL (CS-MIL)
algorithm that integrates the multi-scale information and the inter-scale
relationships is proposed; (2) A toy dataset with scale-specific morphological
features is created and released to examine and visualize differential
cross-scale attention; (3) Superior performance on both in-house and public
datasets is demonstrated by our simple cross-scale MIL strategy. The official
implementation is publicly available at https://github.com/hrlblab/CS-MIL
Childhood loneliness as a predictor of adolescent depressive symptoms: an 8-year longitudinal study
Childhood loneliness is characterised by children’s perceived dissatisfaction with aspects of their social relationships. This 8-year prospective study investigates whether loneliness in childhood predicts depressive symptoms in adolescence, controlling for early childhood indicators of emotional problems and a sociometric measure of peer social preference. 296 children were tested in the infant years of primary school (T1 5 years of age), in the upper primary school (T2 9 years of age) and in secondary school (T3 13 years of age). At T1, children completed the loneliness assessment and sociometric interview. Their teachers completed externalisation and internalisation rating scales for each child. At T2, children completed a loneliness assessment, a measure of depressive symptoms, and the sociometric interview. At T3, children completed the depressive symptom assessment. An SEM analysis showed that depressive symptoms in early adolescence (age 13) were predicted by reports of depressive symptoms at age 8, which were themselves predicted by internalisation in the infant school (5 years). The interactive effect of loneliness at 5 and 9, indicative of prolonged loneliness in childhood, also predicted depressive symptoms at age 13. Parent and peer-related loneliness at age 5 and 9, peer acceptance variables, and duration of parent loneliness did not predict depression. Our results suggest that enduring peer-related loneliness during childhood constitutes an interpersonal stressor that predisposes children to adolescent depressive symptoms. Possible mediators are discussed
BAY61-3606 Affects the Viability of Colon Cancer Cells in a Genotype-Directed Manner
Background:
K-RAS mutation poses a particularly difficult problem for cancer therapy. Activating mutations in K-RAS are common in cancers of the lung, pancreas, and colon and are associated with poor response to therapy. As such, targeted therapies that abrogate K-RAS-induced oncogenicity would be of tremendous value.
Methods:
We searched for small molecule kinase inhibitors that preferentially affect the growth of colorectal cancer cells expressing mutant K-RAS. The mechanism of action of one inhibitor was explored using chemical and genetic approaches.
Results:
We identified BAY61-3606 as an inhibitor of proliferation in colorectal cancer cells expressing mutant forms of K-RAS, but not in isogenic cells expressing wild-type K-RAS. In addition to its anti-proliferative effects in mutant cells, BAY61-3606 exhibited a distinct biological property in wild-type cells in that it conferred sensitivity to inhibition of RAF. In this context, BAY61-3606 acted by inhibiting MAP4K2 (GCK), which normally activates NFκβ signaling in wild-type cells in response to inhibition of RAF. As a result of MAP4K2 inhibition, wild-type cells became sensitive to AZ-628, a RAF inhibitor, when also treated with BAY61-3606.
Conclusions:
These studies indicate that BAY61-3606 exerts distinct biological activities in different genetic contexts
Cell Spatial Analysis in Crohn's Disease: Unveiling Local Cell Arrangement Pattern with Graph-based Signatures
Crohn's disease (CD) is a chronic and relapsing inflammatory condition that
affects segments of the gastrointestinal tract. CD activity is determined by
histological findings, particularly the density of neutrophils observed on
Hematoxylin and Eosin stains (H&E) imaging. However, understanding the broader
morphometry and local cell arrangement beyond cell counting and tissue
morphology remains challenging. To address this, we characterize six distinct
cell types from H&E images and develop a novel approach for the local spatial
signature of each cell. Specifically, we create a 10-cell neighborhood matrix,
representing neighboring cell arrangements for each individual cell. Utilizing
t-SNE for non-linear spatial projection in scatter-plot and Kernel Density
Estimation contour-plot formats, our study examines patterns of differences in
the cellular environment associated with the odds ratio of spatial patterns
between active CD and control groups. This analysis is based on data collected
at the two research institutes. The findings reveal heterogeneous
nearest-neighbor patterns, signifying distinct tendencies of cell clustering,
with a particular focus on the rectum region. These variations underscore the
impact of data heterogeneity on cell spatial arrangements in CD patients.
Moreover, the spatial distribution disparities between the two research sites
highlight the significance of collaborative efforts among healthcare
organizations. All research analysis pipeline tools are available at
https://github.com/MASILab/cellNN.Comment: Submitted to SPIE Medical Imaging. San Diego, CA. February 202
Nucleus subtype classification using inter-modality learning
Understanding the way cells communicate, co-locate, and interrelate is
essential to understanding human physiology. Hematoxylin and eosin (H&E)
staining is ubiquitously available both for clinical studies and research. The
Colon Nucleus Identification and Classification (CoNIC) Challenge has recently
innovated on robust artificial intelligence labeling of six cell types on H&E
stains of the colon. However, this is a very small fraction of the number of
potential cell classification types. Specifically, the CoNIC Challenge is
unable to classify epithelial subtypes (progenitor, endocrine, goblet),
lymphocyte subtypes (B, helper T, cytotoxic T), or connective subtypes
(fibroblasts, stromal). In this paper, we propose to use inter-modality
learning to label previously un-labelable cell types on virtual H&E. We
leveraged multiplexed immunofluorescence (MxIF) histology imaging to identify
14 subclasses of cell types. We performed style transfer to synthesize virtual
H&E from MxIF and transferred the higher density labels from MxIF to these
virtual H&E images. We then evaluated the efficacy of learning in this
approach. We identified helper T and progenitor nuclei with positive predictive
values of (prevalence ) and
(prevalence ) respectively on virtual H&E. This approach
represents a promising step towards automating annotation in digital pathology
Molecular network analysis of phosphotyrosine and lipid metabolism in hepatic PTP1b deletion mice
Metabolic syndrome describes a set of obesity-related disorders that increase diabetes, cardiovascular, and mortality risk. Studies of liver-specific protein-tyrosine phosphatase 1b (PTP1b) deletion mice (L-PTP1b[superscript −/−]) suggest that hepatic PTP1b inhibition would mitigate metabolic-syndrome through amelioration of hepatic insulin resistance, endoplasmic-reticulum stress, and whole-body lipid metabolism. However, the altered molecular-network states underlying these phenotypes are poorly understood. We used mass spectrometry to quantify protein-phosphotyrosine network changes in L-PTP1b[superscript −/−] mouse livers relative to control mice on normal and high-fat diets. We applied a phosphosite-set-enrichment analysis to identify known and novel pathways exhibiting PTP1b- and diet-dependent phosphotyrosine regulation. Detection of a PTP1b-dependent, but functionally uncharacterized, set of phosphosites on lipid-metabolic proteins motivated global lipidomic analyses that revealed altered polyunsaturated-fatty-acid (PUFA) and triglyceride metabolism in L-PTP1b[superscript −/−] mice. To connect phosphosites and lipid measurements in a unified model, we developed a multivariate-regression framework, which accounts for measurement noise and systematically missing proteomics data. This analysis resulted in quantitative models that predict roles for phosphoproteins involved in oxidation–reduction in altered PUFA and triglyceride metabolism.Pfizer Inc. (grant)National Institutes of Health (U.S.) (grant 5R24DK090963)National Institutes of Health (U.S.) (grant U54-CA112967)National Institutes of Health (U.S.) (grant CA49152 R37)National Institutes of Health (U.S.) (grant R01-DK080756)National Mouse Metabolic Phenotyping Center at UMASS (Grant (U24-DK093000))National Science Foundation (U.S.) (Graduate Research Fellowship
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