Lynch syndrome, molecular mechanisms and variant classification.
Amanda B AbildgaardSofie V NielsenInge BernsteinAmelie SteinKresten Lindorff-LarsenRasmus Hartmann-PetersenPublished in: British journal of cancer (2022)
Patients with the heritable cancer disease, Lynch syndrome, carry germline variants in the MLH1, MSH2, MSH6 and PMS2 genes, encoding the central components of the DNA mismatch repair system. Loss-of-function variants disrupt the DNA mismatch repair system and give rise to a detrimental increase in the cellular mutational burden and cancer development. The treatment prospects for Lynch syndrome rely heavily on early diagnosis; however, accurate diagnosis is inextricably linked to correct clinical interpretation of individual variants. Protein variant classification traditionally relies on cumulative information from occurrence in patients, as well as experimental testing of the individual variants. The complexity of variant classification is due to (1) that variants of unknown significance are rare in the population and phenotypic information on the specific variants is missing, and (2) that individual variant testing is challenging, costly and slow. Here, we summarise recent developments in high-throughput technologies and computational prediction tools for the assessment of variants of unknown significance in Lynch syndrome. These approaches may vastly increase the number of interpretable variants and could also provide important mechanistic insights into the disease. These insights may in turn pave the road towards developing personalised treatment approaches for Lynch syndrome.
Keyphrases
- copy number
- machine learning
- deep learning
- case report
- end stage renal disease
- genome wide
- risk assessment
- squamous cell carcinoma
- single molecule
- risk factors
- chronic kidney disease
- ejection fraction
- oxidative stress
- squamous cell
- circulating tumor
- dna methylation
- peritoneal dialysis
- transcription factor
- young adults
- binding protein
- dna damage
- childhood cancer
- health information
- quantum dots
- amino acid
- patient reported