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dc.contributor.authorAldamani, Raghad
dc.contributor.authorAbuhani, Diaa Addeen
dc.contributor.authorShanableh, Tamer
dc.date.accessioned2024-07-01T05:27:21Z
dc.date.available2024-07-01T05:27:21Z
dc.date.issued2024
dc.identifier.citationAldamani, R.; Abuhani, D.A.; Shanableh, T. LungVision: X-ray Imagery Classification for On-Edge Diagnosis Applications. Algorithms 2024, 17, 280. https://doi.org/10.3390/a17070280en_US
dc.identifier.issn1999-4893
dc.identifier.urihttp://hdl.handle.net/11073/25544
dc.description.abstractThis study presents a comprehensive analysis of utilizing TensorFlow Lite on mobile phones for the on-edge medical diagnosis of lung diseases. This paper focuses on the technical deployment of various deep learning architectures to classify nine respiratory system diseases using X-ray imagery. We propose a simple deep learning architecture that experiments with six different convolutional neural networks. Various quantization techniques are employed to convert the classification models into TensorFlow Lite, including post-classification quantization with floating point 16 bit representation, integer quantization with representative data, and quantization-aware training. This results in a total of 18 models suitable for on-edge deployment for the classification of lung diseases. We then examine the generated models in terms of model size reduction, accuracy, and inference time. Our findings indicate that the quantization-aware training approach demonstrates superior optimization results, achieving an average model size reduction of 75.59%. Among many CNNs, MobileNetV2 exhibited the highest performance-to-size ratio, with an average accuracy loss of 4.1% across all models using the quantization-aware training approach. In terms of inference time, TensorFlow Lite with integer quantization emerged as the most efficient technique, with an average improvement of 1.4 s over other conversion approaches. Our best model, which used EfficientNetB2, achieved an F1-Score of approximately 98.58%, surpassing state-of-the-art performance on the X-ray lung diseases dataset in terms of accuracy, specificity, and sensitivity. The model experienced an F1 loss of around 1% using quantization-aware optimization. The study culminated in the development of a consumer-ready app, with TensorFlow Lite models tailored to mobile devices.en_US
dc.language.isoen_USen_US
dc.publisherMDPIen_US
dc.relation.urihttps://doi.org/10.3390/a17070280en_US
dc.subjectMedical diagnosisen_US
dc.subjectCNN image classificationen_US
dc.subjectModel quantizationen_US
dc.subjectOn-edge image classificationen_US
dc.titleLungVision: X-ray Imagery Classification for On-Edge Diagnosis Applicationsen_US
dc.typeArticleen_US
dc.typePeer-Revieweden_US
dc.typePublished versionen_US
dc.identifier.doi10.3390/a17070280


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