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moment_appraoch_weak_Allee_onb.m
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moment_appraoch_weak_Allee_onb.m
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% Moment- Approach fitting of stochastic birth-death-weak-Allee process for small cell
% number data on birth!
% This code is first attempt to use moment-approach (so mean and
% variance)of N(t) trajectories to fit small cell number well data.
% We will start by simulating stochastic cell trajectories using a set b
% and d, A , and tau and see if we can use the following equations for <n(t)> and V(t)
% to perform parameter estimation in Bayesian framework
% For random birth death process we have:
%d<n>/dt=(b-d)<n>(1-(A+tau)./(N+tau)
% specifically, we will simulate the weak model in which A <0, and tau >
% |A|
close all; clear all; clc
% Start by generating 20 n0=1 trajectories
% assume birth rate = 0.0238, death rate = 0.005
% Set up time and N counter
Ninit = [1 2 3 4 5 6 7];
Ninit = 10;
for i = 1:length(Ninit)
b = 0.0092;
d = 0.001;% death rate
delta= b+d;
A = -1;
tau = 4;
%birth_n = b*N; % birth hazard function
%death_n = d*N; % death hazard function
num_samps = 8000;
num_iters = 300;
take_offs = 0;
state = zeros(num_iters,num_samps);
tstate = zeros(num_iters,num_samps);
state(1,:) = Ninit(i); % at time 0, number of cells =N
tjump(1, :) = 0; % start at time 0
ct_extinct = 0;
for j = 1:num_samps
N=Ninit(i);
N0 = N;
time(1)= 0;
for k = 2:num_iters
birth_n = (b*N-(b-d).*N.*((A+tau)./(N+tau))); % birth
if birth_n <0
birth_n = 0;
end
death_n = (d*N); % death
if N==0
N=0;
else
r = rand;
if r< (birth_n)/(birth_n+death_n)
N = N+1;
end
if r>= (birth_n)/(birth_n+death_n)
N = N-1;
end
end
state(k, j) = N;
% set time step to be proportional
r2=rand;
tstep =-log(r2)/(birth_n + death_n);
if tstep == Inf
% make tstep same as previous?
tstep = 1;
end
time = time + tstep;
tstate(k,j) = time;
% If N goes below 0, cells go extinct, N=0 throughout
if N <= 0
state(k:end,j) = 0;
end
end
thres = 0;
if state(end,j) > thres
take_offs= take_offs +1;
end
ind(j) = state(end,j)>thres;
end
P_takeoff(i)= take_offs/num_samps;
P_tkoff_theor(i) = 1-((d/b).^Ninit(i));
end
% find minimum time "measured"
tmin = min(tstate(end, :));
% add constant technical noise to data
sigmaT = 0; % guess that on average count is off by one quarter of a cell?
state = state+ round(normrnd(0, sigmaT,size(state)));
% eliminate those below 0
for j=1:size(state,1)
for i = 1:size(state,2)
if state(j,i)<0
state(j,i)=0;
end
end
end
%% Plot simulated cell number trajectories out to minimum time reached
figure;
hold off
for j = 1:num_samps
plot(tstate(:,j), state(:,j))
hold on
end
xlim([0, tmin])
xlabel('time (hours)')
ylabel('Number of cells')
title(['Simulated N(t) trajectories for N_{0}=', num2str(N0),', b=', num2str(b), ' d=', num2str(d), ', A=', num2str(A), ' & \tau=', num2str(tau)])
%% UNIFORM SAMPLING from stochastic trajectories
%Want to smooth by sampling from N at tsamp
tstart=0;
tint=2;
tsamp = tstart:tint:60+tstart;
for j = 1:num_samps
tstoch = tstate(:,j);
Nstoch = state(:,j);
for i = 1:length(tsamp)
% find nearest tstate that is less that tsamp
ind =find(tstoch<=tsamp(i),1,'last');
tfind = tstoch(ind);
Nsamp(i,j)=Nstoch(ind);
end
end
mu_data = mean(Nsamp,2);
n2_data = mean((Nsamp.^2),2);
var_data = n2_data - ((mu_data).^2);
n3_data = mean((Nsamp.^3),2);
n4_data = mean((Nsamp.^4),2);
var_data = n2_data - ((mu_data).^2);
var4_data = n4_data - ((mu_data).^4);
figure;
hold on
for j = 1:num_samps
plot(tsamp,Nsamp(:,j), 'r.');
hold on
plot(tstate(:,j), state(:,j),'b.');
end
plot(tsamp, mu_data, 'k-', 'LineWidth',3)
xlabel ('time (hours)')
ylabel('<n> expected')
xlim([0, tsamp(end)])
title(['Mean value of N in time for N_{0}=', num2str(N0),', b=', num2str(b), ' d=', num2str(d), ', A=', num2str(A), ' & \tau=', num2str(tau)])
%% Expected value of mean for weak Allee model
V0=0;
C_init(1)=N0;
C_init(2)= N0.^2;
C_init(3) = V0;
C_init(4)= N0.^3;
C_init(5)= N0.^4;
C_init(6) = V0;
f = @(t,C) [((b-d)*C(1)*(1-((A+tau)./(C(1)+tau)))); % dN/dt
2.*C(2).*(b-d) - 2.*C(2).*(b-d).*((A+tau)./(C(1)+tau)) + C(1).*(b+d) +...
-C(1).*(b-d).*((A+tau)./(C(1)+tau))]; %dN2/dt
options1 = odeset('Refine',1);
options = odeset(options1,'NonNegative',1:2);
[t,C]=ode45(f, tsamp,C_init(1:2), options);
mu_C= C(:,1);
n2_C=C(:,2);
% var_C = C(:,3);
% n3_C = C(:,4);
% n4_C = C(:,5);
% v4_C=C(:,6);
figure;
subplot(1,3,1)
plot(tsamp, mu_data(1:end), 'm*')
hold on
plot(tsamp, mu_C, 'k-', 'LineWidth',2)
xlabel('time (hours)')
ylabel('<n>')
title('Expected vs. simulated <n> weak Allee model')
legend('mean n simulated data', 'expected mean n')
legend boxoff
subplot(1,3,2)
plot(tsamp, n2_data(1:end), 'b*')
hold on
plot(tsamp, n2_C, 'k-', 'LineWidth',2)
xlabel('time (hours)')
ylabel('<n2>')
title('Expected vs. simulated <n2> weak Allee model')
legend('n2 simulated data', 'expected n2')
legend boxoff
%
% subplot(1,3,3)
% plot(tsamp, var_data(1:end), 'g*')
% hold on
% plot(tsamp, var_C, 'k-', 'LineWidth',2)
% xlabel('time (hours)')
% ylabel('variance')
% title('Expected vs. simulated var weak Allee model')
% legend('var simulated data', 'expected var')
% legend boxoff
%%
figure;
plot(tsamp, var_data(1:end), 'g*')
hold on
plot(tsamp, n2_C- (mu_C.^2), 'k-')
figure;
subplot(1,3,1)
plot(tsamp, n3_data(1:end), 'm*')
hold on
plot(tsamp, n3_C, 'b-', 'LineWidth',2)
xlabel('time (hours)')
ylabel('<n3>')
title('Expected vs. simulated <n3>')
legend('<n3> in simulated data', 'expected <n3>')
legend boxoff
subplot(1,3,2)
plot(tsamp, n4_data(1:end), 'g*')
hold on
plot(tsamp, n4_C, 'b-', 'LineWidth',2)
xlabel('time (hours)')
ylabel('<n4>')
title('Expected vs. simulated <n4>')
legend('<n4> in simulated data', 'expected <n4>')
legend boxoff
subplot(1,3,3)
plot(tsamp, var4_data(1:end), 'r-')
hold on
plot(tsamp, v4_C, 'b-', 'LineWidth',1)
xlabel('time (hours)')
ylabel('Var4')
title('Expected vs. simulated Var4')
legend('<n4> in simulated data', 'expected <n4>')
legend boxoff