genetic risk prediction
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2021 ◽  
Vol 12 ◽  
Author(s):  
P. Prakrithi ◽  
Priya Lakra ◽  
Durai Sundar ◽  
Manav Kapoor ◽  
Mitali Mukerji ◽  
...  

Host genetic variants can determine their susceptibility to COVID-19 infection and severity as noted in a recent Genome-wide Association Study (GWAS). Given the prominent genetic differences in Indian sub-populations as well as differential prevalence of COVID-19, here, we compute genetic risk scores in diverse Indian sub-populations that may predict differences in the severity of COVID-19 outcomes. We utilized the top 100 most significantly associated single-nucleotide polymorphisms (SNPs) from a GWAS by Pairo-Castineira et al. determining the genetic susceptibility to severe COVID-19 infection, to compute population-wise polygenic risk scores (PRS) for populations represented in the Indian Genome Variation Consortium (IGVC) database. Using a generalized linear model accounting for confounding variables, we found that median PRS was significantly associated (p < 2 x 10−16) with COVID-19 mortality in each district corresponding to the population studied and had the largest effect on mortality (regression coefficient = 10.25). As a control we repeated our analysis on randomly selected 100 non-associated SNPs several times and did not find significant association. Therefore, we conclude that genetic susceptibility may play a major role in determining the differences in COVID-19 outcomes and mortality across the Indian sub-continent. We suggest that combining PRS with other observed risk-factors in a Bayesian framework may provide a better prediction model for ascertaining high COVID-19 risk groups and to design more effective public health resource allocation and vaccine distribution schemes.


Author(s):  
Mariya Lorke ◽  
Laura Harzheim ◽  
Kerstin Rhiem ◽  
Christiane Woopen ◽  
Saskia Jünger

Personalised methods of predicting breast and ovarian cancer risk through genetic testing increasingly demand a person’s understanding and critical appraisal of risk-related information, as well as decision-making and acting upon disclosure of a positive test result. The current study aims at understanding health literacy (HL) among persons at risk of developing familial breast-ovarian cancer (FBOC) from a bottom-up perspective—incorporating their viewpoints into the research process. Its qualitative design integrates an ethnographic-narrative approach and findings from 10 narrative interviews with women who have undergone genetic testing, analysed by using reflexive grounded theory. The collected data reveal the entanglement of the women’s perceptions concerning the risk of getting ill, their identity, and their strategies of managing health. The analysis of this interplay provides an empirical basis for approaching HL in its communicative dimension, considering individuals’ understandings of health and illness, and emphasizing the role of critical HL.


2021 ◽  
Author(s):  
Helgi Hilmarsson ◽  
Arvind S. Kumar ◽  
Richa Rastogi ◽  
Carlos D. Bustamante ◽  
Daniel Mas Montserrat ◽  
...  

ABSTRACTAs genome-wide association studies and genetic risk prediction models are extended to globally diverse and admixed cohorts, ancestry deconvolution has become an increasingly important tool. Also known as local ancestry inference (LAI), this technique identifies the ancestry of each region of an individual’s genome, thus permitting downstream analyses to account for genetic effects that vary between ancestries. Since existing LAI methods were developed before the rise of massive, whole genome biobanks, they are computationally burdened by these large next generation datasets. Current LAI algorithms also fail to harness the potential of whole genome sequences, falling well short of the accuracy that such high variant densities can enable. Here we introduce Gnomix, a set of algorithms that address each of these points, achieving higher accuracy and swifter computational performance than any existing LAI method, while also enabling portable models that are particularly useful when training data are not shareable due to privacy or other restrictions. We demonstrate Gnomix (and its swift phase correction counterpart Gnofix) on worldwide whole-genome data from both humans and canids and utilize its high resolution accuracy to identify the location of ancient New World haplotypes in the Xoloitzcuintle, dating back over 100 generations. Code is available at https://github.com/AI-sandbox/gnomix.


2021 ◽  
pp. 1-12
Author(s):  
Kevin S. O'Connell ◽  
Brandon J. Coombes

Abstract Bipolar disorder (BD) is a highly heritable mental disorder and is estimated to affect about 50 million people worldwide. Our understanding of the genetic etiology of BD has greatly increased in recent years with advances in technology and methodology as well as the adoption of international consortiums and large population-based biobanks. It is clear that BD is also highly heterogeneous and polygenic and shows substantial genetic overlap with other psychiatric disorders. Genetic studies of BD suggest that the number of associated loci is expected to substantially increase in larger future studies and with it, improved genetic prediction of the disorder. Still, a number of challenges remain to fully characterize the genetic architecture of BD. First among these is the need to incorporate ancestrally-diverse samples to move research away from a Eurocentric bias that has the potential to exacerbate health disparities already seen in BD. Furthermore, incorporation of population biobanks, registry data, and electronic health records will be required to increase the sample size necessary for continued genetic discovery, while increased deep phenotyping is necessary to elucidate subtypes within BD. Lastly, the role of rare variation in BD remains to be determined. Meeting these challenges will enable improved identification of causal variants for the disorder and also allow for equitable future clinical applications of both genetic risk prediction and therapeutic interventions.


2021 ◽  
Vol 53 (1) ◽  
pp. 65-75
Author(s):  
David V. Conti ◽  
Burcu F. Darst ◽  
Lilit C. Moss ◽  
Edward J. Saunders ◽  
Xin Sheng ◽  
...  

2020 ◽  
Vol 16 (S2) ◽  
Author(s):  
Michelle K. Lupton ◽  
Amir Fazlollahi ◽  
Amelia Ceslis ◽  
Jurgen Fripp ◽  
Stephen Rose ◽  
...  

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