48 research outputs found

    A Minimal Model of Signaling Network Elucidates Cell-to-Cell Stochastic Variability in Apoptosis

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    Signaling networks are designed to sense an environmental stimulus and adapt to it. We propose and study a minimal model of signaling network that can sense and respond to external stimuli of varying strength in an adaptive manner. The structure of this minimal network is derived based on some simple assumptions on its differential response to external stimuli. We employ stochastic differential equations and probability distributions obtained from stochastic simulations to characterize differential signaling response in our minimal network model. We show that the proposed minimal signaling network displays two distinct types of response as the strength of the stimulus is decreased. The signaling network has a deterministic part that undergoes rapid activation by a strong stimulus in which case cell-to-cell fluctuations can be ignored. As the strength of the stimulus decreases, the stochastic part of the network begins dominating the signaling response where slow activation is observed with characteristic large cell-to-cell stochastic variability. Interestingly, this proposed stochastic signaling network can capture some of the essential signaling behaviors of a complex apoptotic cell death signaling network that has been studied through experiments and large-scale computer simulations. Thus we claim that the proposed signaling network is an appropriate minimal model of apoptosis signaling. Elucidating the fundamental design principles of complex cellular signaling pathways such as apoptosis signaling remains a challenging task. We demonstrate how our proposed minimal model can help elucidate the effect of a specific apoptotic inhibitor Bcl-2 on apoptotic signaling in a cell-type independent manner. We also discuss the implications of our study in elucidating the adaptive strategy of cell death signaling pathways.Comment: 9 pages, 6 figure

    Increased expression of Ki-67 in mantle cell lymphoma is associated with de-regulation of several cell cycle regulatory components, as identified by global gene expression analysis

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    Background and Objectives. Mantle cell lymphoma (MCL) is an aggressive disease. Patients with this malignancy have a median survival of 3 years. To better understand disease progression, which is characterized by increased proliferation, we analyzed the gene expression of MCL with different proliferative indices, as determined by immunohistochemical staining for Ki-67. Furthermore, primary and relapsed tumors were compared to identify the possible growth advantages possessed by cells which persist after therapy and which might evolve into a tumor relapse. Design and Methods. Twenty-one samples of MCL were analyzed, using the Affymetrix U95Av2 chip, containing probes for approximately 12,000 transcripts. Samples with a high versus low fraction of Ki-67(+) cells were compared as were relapsed versus primary tumors. Immunohistochemistry was used to confirm the expression of some gene products. Results. A distinct genetic signature, consisting of 32 genes, was found when comparing Ki-67(high) with Ki-67(low) MCL. The signature consisted of genes involved in cellular processes, such as mitotic spindle formation, gene transcription and cell cycle regulation, e.g. components of the p53 and retinoblastoma protein (pRb) pathways. Of note, cyclin D1, the hallmark of MCL, as well as Ki-67 were up-regulated in the samples with a high proliferative index. Comparing primary vs. relapsed tumors, 26 individual genes were found, several involved in cell adhesion. Furthermore, increased expression of transferrin receptor was found in the relapsed tumors. Interpretation and Conclusions. A genetic signature distinguishing Ki-67(high) MCL from Ki-67(low) was established. The generated signature was used to assign new MCL samples to the high proliferative group, validating the association between these genes and proliferation in MCL

    Cytometry

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    Targeting the IDH2

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