The paper presents a novel method for malware detection using sequential pattern mining of API calls, which aims to identify malicious behavior in malware samples. Experimental results demonstrate that this method achieves a high accuracy with a 0.999 f-measure on a dataset of 8,675 samples, where it utilizes dynamic analysis and machine learning algorithms for classification. The proposed approach effectively captures distinctive API call patterns, thus providing a reliable solution for malware detection.