Looping through column rows and filling another matrix by columns?

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Hi all,
I am trying to find ranks with a specific method for failure times with censoring. I am able to go through my loop and get the appropriate answers for the ranks for the first sample (100 failure times). But I have 1000 samples of 100 times to do this for and I need to fill another matrix with the ranks for the individual sample sets of 100. I can't get my code to go to the next column (sample) after finishing the first and filling out the new matrix.
Here is what I have:
function [BenardRanks] = CensMedianRanks(censoring,T,time)
% ***Find Adjusted Median Ranks for randomly generated data***
% sort the matrix of observed times
% & sort censoring matrix accordingly
% (to ensure censored items remain censored even when sorted)
A = time;
B = censoring;
[SA,I] = sort(A);
J = 0:size(A,2)-1;
x = I + J*size(A,1);
adjCensoring = B(x);
% create a matrix of integer rates (transpose(1,2,3,...,T(1)-1,T(1))
c = zeros(T(1),T(2));
C = repmat((1:size(c,1))',1,size(c,2));
% reverse the ranks matrix by sample
reverseRanks = flip(C);
% initialize previously adjusted ranks (PAR) to 0
PAR = 0;
% initialize matrix of indiviual sample results sampleMRAdj
sampleMRAdj = zeros(T(1),T(2));
% initialize large matrix to append individual samples to
MedRankAdj = zeros(T(1),T(2));
MedianRanksCens = [];
% declare empty vector (of zeros) to hold BenardRanks (size = Ranki)
BenardRanks = zeros(T(1),T(2));
% set all censored reverse ranks to 0 (censored units don't get ranks themselves but influence other ranks)
for k =1:T(1)
if censoring(k) == 0
reverseRanks(k) = 0;
end
end
for i=1:T(1)
if reverseRanks(i) ~= 0
sampleMRAdj(i) = ((reverseRanks(i)*PAR)+(T(1)+1))/(reverseRanks(i)+1);
elseif reverseRanks(i) == 0
sampleMRAdj(i) = sampleMRAdj(i-1);
end
PAR = sampleMRAdj(i);
end
% Benard's Approximation for Median Ranks
% index through Ranks with loop to calculate and store BenardRanks
for j = 1:T(1)
if sampleMRAdj(j) ~= 0
BenardRanks(j) = (sampleMRAdj(j)-0.3)/(T(1)+0.4);
end
end
MedianRanksCens = [MedianRanksCens,BernardRanks]
end
I want MedianRankCens to be all the adjusted median ranks (the bernard approximations) for the individual samples.
Help?
Thanks!

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