Pneumonia, a severe respiratory infection causing significant global morbidity and mortality, usually relies on chest X-rays for detection. However, these methods are costly, time-consuming, and expose patients to ionizing radiation. A novel approach called "Beyond Radiology" is introduced, using enhanced machine learning techniques to revolutionize pneumonia detection. This method integrates advanced algorithms with diverse patient data, including electronic health records, clinical notes, and lab results, creating a comprehensive diagnostic model. Going beyond radiology’s limitations, it captures intricate patterns and subtle indicators of pneumonia. The enhanced machine learning model, evaluated rigorously on a diverse dataset, demonstrates high accuracy and efficiency in distinguishing pneumonia cases. Holistically analyzing various data sources enhances diagnostic reliability, reduces misdiagnosis risk, and allows timely intervention. This research promises transformative impact, offering a cost-effective, non-invasive solution for pneumonia detection in various healthcare settings. The "Beyond Radiology" approach, eliminating frequent radiological examinations, pioneers enhanced machine learning techniques, advancing medical imaging and AI-driven healthcare for improved global health outcomes against pneumonia.