Abstract
This paper explores the modern applications of computer technologies in the diagnosis and treatment of chronic bronchitis in pediatric patients. Chronic bronchitis, a prolonged inflammatory condition of the bronchi, requires timely and accurate identification to prevent complications in children. The study highlights how advanced imaging tools, electronic health records (EHRs), artificial intelligence (AI)-assisted diagnostic systems, and remote monitoring technologies contribute to the early detection, continuous observation, and effective management of the disease. Particular attention is paid to how digital tools enhance the precision of diagnosis through improved interpretation of radiological data and pulmonary function tests.
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