Javascript must be enabled to continue!
ELIMINATOR: Essentiality anaLysIs using MultIsystem Networks And inTeger prOgRamming
View through CrossRef
Abstract
A gene is considered as essential when it is indispensable for cells to grow and replicate under a certain environment. However, gene essentiality is not a structural property but rather a contextual one, which depends on the specific biological conditions affecting the cell. This circumstantial essentiality of genes is what brings the attention of scientist since we can identify genes essential for cancer cells but not essential for healthy cells. This same contextuality makes their identification extremely challenging. Huge experimental efforts such as Project Achilles where the essentiality of thousands of genes is measured together with a plethora of molecular data (transcriptomics, copy number, mutations, etc.) in over one thousand cell lines can shed light on the causality behind the essentiality of a gene in a given environment. Here, we present an in-silico method for the identification of patient-specific essential genes using constraint-based modelling (CBM). Our method expands the ideas behind traditional CBM to accommodate multisystem networks. In essence, it first calculates the minimum number of non-expressed genes required to be active by the cell to sustain life as defined by a set of requirements; and second, it performs an exhaustive in-silico gene knockout to find those that lead to the need of activating additional non-expressed genes. We validated the proposed methodology using a set of 452 cancer cell lines derived from the Cancer Cell Line Encyclopedia where an exhaustive experimental large-scale gene knockout study using CRISPR (Achilles Project) evaluates the impact of each removal. We also show that the integration of different essentiality predictions per gene, what we called Essentiality Congruity Score, (derived from multiple pathways) reduces the number of false positives. Finally, we explored the gene essentiality predictions for a breast cancer patient dataset, and our results showed high concordance with previous publications. These findings suggest that identifying genes whose activity is fundamental to sustain cellular life in a patient-specific manner is feasible using in-silico methods. The patient-level gene essentiality predictions can pave the way for precision medicine by identifying potential drug targets whose deletion can induce death in tumour cells.
Title: ELIMINATOR: Essentiality anaLysIs using MultIsystem Networks And inTeger prOgRamming
Description:
Abstract
A gene is considered as essential when it is indispensable for cells to grow and replicate under a certain environment.
However, gene essentiality is not a structural property but rather a contextual one, which depends on the specific biological conditions affecting the cell.
This circumstantial essentiality of genes is what brings the attention of scientist since we can identify genes essential for cancer cells but not essential for healthy cells.
This same contextuality makes their identification extremely challenging.
Huge experimental efforts such as Project Achilles where the essentiality of thousands of genes is measured together with a plethora of molecular data (transcriptomics, copy number, mutations, etc.
) in over one thousand cell lines can shed light on the causality behind the essentiality of a gene in a given environment.
Here, we present an in-silico method for the identification of patient-specific essential genes using constraint-based modelling (CBM).
Our method expands the ideas behind traditional CBM to accommodate multisystem networks.
In essence, it first calculates the minimum number of non-expressed genes required to be active by the cell to sustain life as defined by a set of requirements; and second, it performs an exhaustive in-silico gene knockout to find those that lead to the need of activating additional non-expressed genes.
We validated the proposed methodology using a set of 452 cancer cell lines derived from the Cancer Cell Line Encyclopedia where an exhaustive experimental large-scale gene knockout study using CRISPR (Achilles Project) evaluates the impact of each removal.
We also show that the integration of different essentiality predictions per gene, what we called Essentiality Congruity Score, (derived from multiple pathways) reduces the number of false positives.
Finally, we explored the gene essentiality predictions for a breast cancer patient dataset, and our results showed high concordance with previous publications.
These findings suggest that identifying genes whose activity is fundamental to sustain cellular life in a patient-specific manner is feasible using in-silico methods.
The patient-level gene essentiality predictions can pave the way for precision medicine by identifying potential drug targets whose deletion can induce death in tumour cells.
Related Results
ACE: A Probabilistic Model for Characterizing Gene-Level Essentiality in CRISPR Screens
ACE: A Probabilistic Model for Characterizing Gene-Level Essentiality in CRISPR Screens
High-throughput knockout screens based on CRISPR-Cas9 are widely used to evaluate the essentiality of genes across a range of cell types. Here we introduce a probabilistic modeling...
Predicting gene knockout effects from expression data
Predicting gene knockout effects from expression data
AbstractBackgroundThe study of gene essentiality, which measures the importance of a gene for cell division and survival, is used for the identification of cancer drug targets and ...
Thyristor Arc Eliminator for Protection of Low Voltage Electrical Equipment
Thyristor Arc Eliminator for Protection of Low Voltage Electrical Equipment
The paper presents the layout of two opposing thyristors working as an Arc Eliminator (AE). The presented solution makes it possible to protect an electrical apparatus against the ...
Encoder Hurwitz Integers: The Hurwitz integers that have the ”division with small division” property
Encoder Hurwitz Integers: The Hurwitz integers that have the ”division with small division” property
Abstract
The residue class set of a Hurwitz integer is constructed by modulo function with primitive Hurwitz integer whose norm is a prime integer, i.e. prime Hurwitz integ...
Exercise testing in patients with multisystem inflammatory syndrome in children-related myocarditis versus idiopathic or viral myocarditis
Exercise testing in patients with multisystem inflammatory syndrome in children-related myocarditis versus idiopathic or viral myocarditis
AbstractBackground:While most children with multisystem inflammatory syndrome in children have rapid recovery of cardiac dysfunction, little is known about the long-term outcomes r...
A novel essential domain perspective for exploring gene essentiality
A novel essential domain perspective for exploring gene essentiality
AbstractMotivation: Genes with indispensable functions are identified as essential; however, the traditional gene-level studies of essentiality have several limitations. In this st...
Abstract 1563: A machine learning approach to predict platform specific gene essentiality in cancer
Abstract 1563: A machine learning approach to predict platform specific gene essentiality in cancer
Abstract
Loss-of-function (LOF) screenings across a set of diverse cancer cell lines has the potential to reveal novel synthetic lethal interactions, cancer-specific...
Nutrient essentiality revisited (LB407)
Nutrient essentiality revisited (LB407)
The objective of this project was to present case studies providing supportive rationale for expanding the definitions and criteria for nutrient essentiality. An environmental scan...

