The rise of social media platforms has provided researchers with unprecedented access to vast amounts of user-generated content, offering a unique opportunity to explore various aspects of human behavior, including mental health. This paper presents a novel approach to identifying suicidal signals in tweets using Natural Language Processing (NLP) techniques and Deep Learning algorithms. We propose a multi-step methodology that involves data collection, preprocessing, feature extraction, and classification. Leveraging state-of-the-art deep learning architectures such as recurrent neural networks (RNNs) and transformer models, our approach aims to accurately detect linguistic patterns indicative of suicidal ideation and distress. We evaluate the effectiveness of our method using a large dataset of annotated tweets and demonstrate promising results in terms of both precision and recall. Furthermore, we discuss the ethical implications and potential applications of our research in suicide prevention and mental health support systems.