I will first consider the case of a $4\times 4$ matrix $Q$, and generalize to a higher dimensional $Q$ at the end.
A. The four-by-four case.
It is helpful to start from the polar decomposition
$$Q= \left(\begin{array}{cc}U'&0\\ 0&V'\end{array}\right) \left(\begin{array}{cc}\sqrt{1-T}&\sqrt{T}\\ \sqrt{T}&-\sqrt{1-T} \end{array}\right) \left(\begin{array}{cc}U&0\\ 0&V\end{array}\right) $$ where $U,V,U',V'$ are four unitary matrices and $$ T=\left(\begin{array}{cc}T_1&0\\ 0&T_2\end{array}\right)$$ is a diagonal matrix with diagonal elements $0\leq T_n\leq 1$.
You seek the expectation value of the matrix $$M=[I-U^{\rm H}(1-T)U]^{-1}=U^{\rm H}T^{-1}U$$ (I have used that $U^{\rm H}U=I$.)
The Haar distribution for $Q$ implies a Haar distribution for $U$, and moreover implies for $T_1,T_2$ the following distribution [*]
$$P(T_1,T_2)=6(T_1-T_2)^2,\;\;0\leq T_n\leq 1$$
The marginal distribution for $T_1$ is
$$P(T_1)=2-6T_1+6T_1^2$$
So you see that the expectation value of $M$ diverges: $E({\rm Tr}\,M)=2E(1/T_1)=\infty$.
B. The higher-dimensional case.
Now let's consider an $N\times N$ dimensional unitary matrix $Q$, with $N\geq 4$. The $2\times 2$ upper-left block is still of the form $U'TU$, with unitary $U'$, $U$ so we still have $M=U^{\rm H}T^{-1}U$. The Haar distribution of $Q$ still implies a Haar distribution for $U$, what changes is the distribution of $T_1$ and $T_2$ [*]
$$P(T_1,T_2)=C(T_1-T_2)^2 (T_1 T_2)^{N-4}$$
with normalization constant $C=\frac{1}{2}(N-2)^2(N^2-4N+3)^2$. The marginal distribution of $T_1$ is
$$P(T_1)=CT_1^{N-4}\left(\frac{1}{N-1}-\frac{2T_1}{N-2}+\frac{T_1^2}{N-3}\right)$$
So now the expectation of $M$ converges,
$$E(M)=\frac{N-2}{N-4}I$$
[*] See Equation (2.10) of this review.