<div><p>A key constraint in genomic testing in oncology is that matched normal specimens are not commonly obtained in clinical practice. Thus, while well-characterized genomic alterations do not require normal tissue for interpretation, a significant number of alterations will be unknown in whether they are germline or somatic, in the absence of a matched normal control. We introduce SGZ (somatic-germline-zygosity), a computational method for predicting somatic vs. germline origin and homozygous vs. heterozygous or sub-clonal state of variants identified from deep massively parallel sequencing (MPS) of cancer specimens. The method does not require a patient matched normal control, enabling broad application in clinical research. SGZ predict...
Abstract Background Both somatic copy number alterations (CNAs) and germline copy number variants (C...
Abstract Background A key step in cancer genome analy...
Cancer results from the progressive accumulation of genetic alterations that drive uncontrolled cell...
International audienceA key constraint in genomic testing in oncology is that matched normal specime...
International audienceA key constraint in genomic testing in oncology is that matched normal specime...
International audienceA key constraint in genomic testing in oncology is that matched normal specime...
International audienceA key constraint in genomic testing in oncology is that matched normal specime...
Cancer development and progression is driven by genetic alterations. These alterations include somat...
Tumor analyses commonly employ a correction with a matched normal (MN), a sample from healthy tissue...
Tumor analyses commonly employ a correction with a matched normal (MN), a sample from healthy tissue...
Tumor analyses commonly employ a correction with a matched normal (MN), a sample from healthy tissue...
Genomic sequence mutations can be pathogenic in both germline and somatic cells. Several authors hav...
Tumor analyses commonly employ a correction with a matched normal (MN), a sample from healthy tissue...
The rapid development of high-throughput sequencing technology provides a new chance to extend the s...
During tumor inception and progression, culprit gene variants confer selective advantage to progenit...
Abstract Background Both somatic copy number alterations (CNAs) and germline copy number variants (C...
Abstract Background A key step in cancer genome analy...
Cancer results from the progressive accumulation of genetic alterations that drive uncontrolled cell...
International audienceA key constraint in genomic testing in oncology is that matched normal specime...
International audienceA key constraint in genomic testing in oncology is that matched normal specime...
International audienceA key constraint in genomic testing in oncology is that matched normal specime...
International audienceA key constraint in genomic testing in oncology is that matched normal specime...
Cancer development and progression is driven by genetic alterations. These alterations include somat...
Tumor analyses commonly employ a correction with a matched normal (MN), a sample from healthy tissue...
Tumor analyses commonly employ a correction with a matched normal (MN), a sample from healthy tissue...
Tumor analyses commonly employ a correction with a matched normal (MN), a sample from healthy tissue...
Genomic sequence mutations can be pathogenic in both germline and somatic cells. Several authors hav...
Tumor analyses commonly employ a correction with a matched normal (MN), a sample from healthy tissue...
The rapid development of high-throughput sequencing technology provides a new chance to extend the s...
During tumor inception and progression, culprit gene variants confer selective advantage to progenit...
Abstract Background Both somatic copy number alterations (CNAs) and germline copy number variants (C...
Abstract Background A key step in cancer genome analy...
Cancer results from the progressive accumulation of genetic alterations that drive uncontrolled cell...