Abstract

Several pathologies have a direct impact on society, causing public health problems. Pulmonary diseases such as Chronic obstructive pulmonary disease (COPD) are already the third leading cause of death in the world, leaving tuberculosis at ninth with 1.7 million deaths and over 10.4 million new occurrences. The detection of lung regions in images is a classic medical challenge. Studies show that computational methods contribute significantly to the medical diagnosis of lung pathologies by Computerized Tomography (CT), as well as through Internet of Things (IoT) methods based in the context on the health of things. The present work proposes a new model based on IoT for classification and segmentation of pulmonary CT images, applying the transfer learning technique in deep learning methods combined with Parzen’s probability density. The proposed model uses an Application Programming Interface (API) based on the Internet of Medical Things to classify lung images. The approach was very effective, with results above 98% accuracy for classification in pulmonary images. Then the model proceeds to the lung segmentation stage using the Mask R-CNN network to create a pulmonary map and use fine-tuning to find the pulmonary borders on the CT image. The experiment was a success, the proposed method performed better than other works in the literature, reaching high segmentation metrics values such as accuracy of 98.34%. Besides reaching 5.43 s in segmentation time and overcoming other transfer learning models, our methodology stands out among the others because it is fully automatic. The proposed approach has simplified the segmentation process using transfer learning. It has introduced a faster and more effective method for better-performing lung segmentation, making our model fully automatic and robust.

Highlights

  • The principal exam for obtaining thoracic medical images, which allows a clear view of the patient’s pulmonary airways, is the Computed Tomography (CT) [1]

  • In the First Stage, the result and discussion of the experiment is presented based on the classification of lung images using the Internet of Things (IoT), where the Application Programming Interface (API) based on IoT identifies in the image shown at the entrance of the network, whether there are pulmonary regions or not

  • The Second Stage of Results and Discussion consists of the results of the second stage of the experiment, as presented in Section 4 of Methodology, in which it represents the results of lung segmentation in Computerized Tomography (CT) images

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Summary

Introduction

The principal exam for obtaining thoracic medical images, which allows a clear view of the patient’s pulmonary airways, is the Computed Tomography (CT) [1]. Aware of the difficulties in diagnosing lung diseases, several researchers have joined forces to elaborate and construct tools to assist medical specialists in the most diverse operations They can help in the detection of diseases in exams [12], in the segmentation of whole organs [13] for a better analysis of a specialist, or even in the segmentation of the regions visibly affected by the disease [14]. Machine Learning techniques and artificial intelligence are applied to this data set to generate analytics Specialists study this information to plan a better lifestyle and disease prevention for their patients [31]. The model proposed in this study uses a new approach with fine-tuning Convolutional Neural Network architecture (R-CNN mask) aided by Parzen-window method [37]. The use of Deep Learning with a fine-tuning technique based on Mask R-CNN and Parzen-window

Related Works
Background
Deep Learning Extractors
Results b
Classifiers
Deep Learning
Parzen-Window
Metrics
Data-Set
Methodology
First Phase—Classification
Second Phase—Segmentation
Results and Discussion
First Stage of the Experiment
Second Stage of the Experiment
Proposed Method
Methods
Conclusions and Future Works
Full Text
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