Consider a sequence of independent Bernoulli trials with success probability p. Let N(n; k
1, k
2) denote the number of times that k
1 failures are followed by k
2 successes among the first n Bernoulli trials. We employ the Stein-Chen method to obtain a total variation upper bound for the rate of convergence of N(n; k
1, k
2) to a suitable Poisson random variable. As a special case, the corresponding limit theorem is established. Similar results are obtained for N
k
3
(n; k
1, k
2), the number of times that k
1 failures followed by k
2 successes occur k
3 times successively in n Bernoulli trials. The bounds obtained are generally sharper than, and improve upon, some of the already known results. Finally, the technique is adapted to obtain Poisson approximation results for the occurrences of the above-mentioned events under Markov-dependent trials.