Let us define $M_0=2^n$ for $n\in\mathbb{N}$. Let $\ell\in\mathbb{N}$ be the number of random variables we are working with. For $1\leqslant i\leqslant\ell$, we define $M_i$ to be a random variable following a binomial distribution with parameters $M_{i-1}$ and $2^{-n}$.
I'm interested in computing $\mathbb{P}\left[M_\ell=1\middle|M_\ell\geqslant1\right]$. To be fair, I only needed to lower-bound this probability, which is easy to do by computing $\mathbb{P}\left[M_1=1\middle|M_1\geqslant1\right]\approx\frac{\mathrm{e}^{-1}}{1-\mathrm{e}^{-1}}>\frac12$, but, out of curiosity, I was wondering if it was possible to get a closed-form for $\mathbb{P}\left[M_\ell=1\middle|M_\ell\geqslant1\right]$, and I do not know of any theorem that would help me with this.
Intuitively, this probability should decrease exponentially fast to $1$, and it might be possible to get the closed-form expression of the probability for $\ell\leqslant3$ by hand, but it will quickly become tedious to operate that way. Is there any clever way I'm missing for this?