Abstract
Author Contributions
Copyright© 2021
Narain Prem.
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Introduction
In my article, It is well known how statistics entered in genetics due to work of Fisher Soon after the introduction of chip technology – the genotyping of molecular markers – the method of plant breeding got a big impetus in increasing precision in the breeding process by incorporating the marker information in the methods of selection and cross breeding. The position of markers in the genome is fully known through linkage maps. With this information the methods of quantitative genetics got modified in that the variability due to additive effects of genes got further decomposed into that due to association of marker information with the genes controlling the trait and the rest. The proportion of additive genetic variability due to such association gives rise to another parameter It shows that the missing heritability occurs because of a certain proportion of additive genetic variance not being associated with the markers. When millions of SNPs are considered in a GWAS study it is implicit that numerous QTLs causing variation in the trait are either sitting on a subset of SNPs or else are very close to them. Identification of causal variants by sparse regression methods is then an attempt to detect and locate genes responsible for the trait in terms of the SNP markers If we denote missing heritability by
This is a function of Missing heritability = heritability – heritability *predictability. The missing heritability depends on two parameters – the heritability The above When we have more than one trait under study the pair-wise correlation between the traits at the genetic level becomes crucial in addition to the heritability of the traits. Such correlations can arise from two different causes. The traits may be affected by two sets of genes, the members of which are, to some extent, linked with one another. Such correlations could, however, be transient in that their signs could be reversed or whose magnitude could be brought down to zero by breaking linkages between gene complexes by selection. The other and the most important of cause of genetic correlation is the The phenotypic correlation ( It may be noted that when It is straightforward to see that the magnitude of imperfect association with the markers in so far as the additive genetic correlation between the traits is concerned can be seen by considering the difference between the additive genetic covariance and the covariance between the molecular markers. This shows that with We therefore find that the imperfect association of genes for the trait with the markers not only give rise to There is however one difference between missing heritability and missing co-heritability. The former is necessarily positive but the latter can be negative. We can thus express the missing co-heritability per unit of It seems the expression Z = [hx2hy2]1/2 * Co-predictability For a numerical study, we take Co-heritability (missing) = We plot this for This Figure illustrates the behaviour for variation in With two traits having heritability The behaviour of GHmissing (missing Generalised Heritability)with variation in p isindependent of the effect of molecular genetic correlation (rm) and is practically dependent on p, for a given value of GH which means for given values of h2, rP, and rA, in almost the same manner as in the case when we consider a single trait. In other words, h2missing = h2 (1-p2) and GHmissing = GH (1-p2) where GH, the Generalised Heritability, for equal heritability of the two traits, is GH = h2 [(1-rA2)/(1- rP2)]1/2.
p
h2 =0.05
h2=0.20
h2=0.25
h2=0.5
0
0.1
0.2
0.3
0.4
0.5
0.6
0.7
0.8
0.9
1.0
(rA/rm)=0.2
p
0.05
-0.05
0.1
-0.1
0.0
0.0
0.0
0.05
-0.05
0.1
-0.1
0.0
0.0
0.1
0.049
-0.049
0.099
-0.099
0.0001
-0.0001
0.2
0.046
-0.046
0.096
-0.096
0.004
-0.004
0.3
0.041
-0.041
0.091
-0.091
0.009
-0.009
0.4
0.034
-0.034
0.084
-0.084
0.016
-0.016
0.5
0.025
-0.025
0.075
-0.075
0.025
-0.025
0.6
0.014
-0.014
0.064
-0.064
0.036
-0.036
0.7
0.001
-0.001
0.051
-0.051
0.049
-0.049
0.8
0.031
-0.031
0.019
-0.019
0.081
-0.081
0.9
0.014
-0.014
0.036
-0.036
0.064
-0.064
1.0
0.05
-0.05
0.0
0.0
0.1
-0.1