Target selection is the first and pivotal step in drug discovery. An incorrect choice may not manifest itself for many years after hundreds of millions of research dollars have been spent. We collected a set of 332 targets that succeeded or failed in phase III clinical trials, and explored whether Omic features describing the target genes could predict clinical success. We obtained features from the recently published comprehensive resource: Harmonizome. Nineteen features appeared to be significantly correlated with phase III clinical trial outcomes, but only 4 passed validation schemes that used bootstrapping or modified permutation tests to assess feature robustness and generalizability while accounting for target class selection bias. We...
Recent advances in high-throughput sequencing have accelerated the accumulation of omics data on the...
This thesis addresses important statistical challenges in precision medicine, the clinical practice ...
High-confidence prediction of complex traits such as disease risk or drug response is an ultimate go...
Bringing a new drug from discovery to the clinic takes a decade, is very expensive and often fails d...
International audience(1) Background: Inter-tumour heterogeneity is one of cancer’s most fundamental...
With accumulating public omics data, great efforts have been made to characterize the genetic hetero...
In-depth modeling of the complex interplay among multiple omics data measured from cancer cell lines...
<p>Each dataset took the form of a matrix with genes labeling the rows and features labeling the col...
High-throughput ‘omics’ technologies that generate molecular profiles for biospecimens have been ext...
MotivationThe application of machine learning (ML) techniques in the medical field has demonstrated ...
An important challenge in drug discovery and disease prognosis is to predict genes that are preferen...
Abstract Background Although large-scale, next-generation sequencing (NGS) studies of cancers hold p...
A large number of cancer drugs have been developed to target particular genes/pathways that are cruc...
With the advancement of high throughput technologies, many repositories of the genome, proteome, tra...
Publisher Copyright: © 2022 The Author(s)Current statistical models for drug response prediction and...
Recent advances in high-throughput sequencing have accelerated the accumulation of omics data on the...
This thesis addresses important statistical challenges in precision medicine, the clinical practice ...
High-confidence prediction of complex traits such as disease risk or drug response is an ultimate go...
Bringing a new drug from discovery to the clinic takes a decade, is very expensive and often fails d...
International audience(1) Background: Inter-tumour heterogeneity is one of cancer’s most fundamental...
With accumulating public omics data, great efforts have been made to characterize the genetic hetero...
In-depth modeling of the complex interplay among multiple omics data measured from cancer cell lines...
<p>Each dataset took the form of a matrix with genes labeling the rows and features labeling the col...
High-throughput ‘omics’ technologies that generate molecular profiles for biospecimens have been ext...
MotivationThe application of machine learning (ML) techniques in the medical field has demonstrated ...
An important challenge in drug discovery and disease prognosis is to predict genes that are preferen...
Abstract Background Although large-scale, next-generation sequencing (NGS) studies of cancers hold p...
A large number of cancer drugs have been developed to target particular genes/pathways that are cruc...
With the advancement of high throughput technologies, many repositories of the genome, proteome, tra...
Publisher Copyright: © 2022 The Author(s)Current statistical models for drug response prediction and...
Recent advances in high-throughput sequencing have accelerated the accumulation of omics data on the...
This thesis addresses important statistical challenges in precision medicine, the clinical practice ...
High-confidence prediction of complex traits such as disease risk or drug response is an ultimate go...