IVCVLGSep 21, 2023

Identification of pneumonia on chest x-ray images through machine learning

arXiv:2309.11995v1h-index: 2
Originality Synthesis-oriented
AI Analysis

This addresses pneumonia diagnosis, a critical issue for infant health, but is incremental as it applies existing transfer learning methods to a specific medical dataset.

The study tackled the problem of early pneumonia identification in chest X-ray images by developing a machine learning software, achieving 98% sensitivity and 97.3% specificity on a test sample.

Pneumonia is the leading infectious cause of infant death in the world. When identified early, it is possible to alter the prognosis of the patient, one could use imaging exams to help in the diagnostic confirmation. Performing and interpreting the exams as soon as possible is vital for a good treatment, with the most common exam for this pathology being chest X-ray. The objective of this study was to develop a software that identify the presence or absence of pneumonia in chest radiographs. The software was developed as a computational model based on machine learning using transfer learning technique. For the training process, images were collected from a database available online with children's chest X-rays images taken at a hospital in China. After training, the model was then exposed to new images, achieving relevant results on identifying such pathology, reaching 98% sensitivity and 97.3% specificity for the sample used for testing. It can be concluded that it is possible to develop a software that identifies pneumonia in chest X-ray images.

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