| Literature DB >> 34594396 |
Sapna Juneja1,2,3,4,5, Abhinav Juneja1,2,3,4,5, Gaurav Dhiman1,2,3,4,5, Sanchit Behl1,2,3,4,5, Sandeep Kautish1,2,3,4,5.
Abstract
There have been remarkable changes in our lives and the way we perceive the world with advances in computing technology. Healthcare sector is evolving with the intervention of the latest computer-driven technology and has made a remarkable change in the diagnosis and treatment of various diseases. Due to many governing factors including air pollution, there is a rapid rise in chest-related diseases and the number of such patients is rising at an alarming rate. In this research work, we have employed machine learning approach for the detecting various chest-related problems using convolutional neural networks (CNN) on an open dataset of chest X-rays. The method has an edge over the traditional approaches for image segmentation including thresholding, k-means clustering, and edge detection. The CNN cannot scan and process the whole image at an instant; it needs to recursively scan small pixel spots until it has scanned the whole image. Spatial transformation layers and VGG19 have been used for the purpose of feature extraction, and ReLU activation function has been employed due to its inherent low complexity and high computation efficiency; finally, stochastic gradient descent has been used as an optimizer. The main advantage of the current method is that it retains the essential features of the image for prediction along with incorporating a considerable dimensional reduction. The model delivered substantial improvement over existing research in terms of precision, f-score, and accuracy of prediction. This model if used precisely can be very effective for healthcare practitioners in determining the thoracic or pneumonic symptoms in the patient at an early stage thus guiding the practitioner to start the treatment immediately leading to fast improvement in the health status of the patient.Entities:
Mesh:
Year: 2021 PMID: 34594396 PMCID: PMC8478541 DOI: 10.1155/2021/3900254
Source DB: PubMed Journal: Comput Math Methods Med ISSN: 1748-670X Impact factor: 2.238
Brief summary of inspiration from the earlier research in the domain of disease identification.
| S. No. | Author and year | Paper title | Technique used | Objective |
|---|---|---|---|---|
| 1 | Bharati & Podder; [ | Disease Detection from Lung X-ray Images Based on Hybrid Deep Learning Subrato | CNN, vanilla NN | The model proposed classification of chest diseases with its metrics as precision, recall, and |
| 2 | Rajaraman et al. [ | Assessment of an Ensemble of Machine Learning Models towards Abnormality Detection in Chest Radiographs | Sequential CNN | Used weighted averaging to in base learners to classify the chest - rays |
| 3 | Chan et al. [ | Effective Pneumothorax Detection for Chest X-Ray Images Using Local Binary Pattern and Support Vector Machine | Support vector machine and local binary pattern | The paper proposed a methodology to detect the lung diseases using the local binary patterns and then further used the SVM technique to classify the type of disease |
| 4 | Li et al. [ | Thoracic Disease Identification and Localization with Limited Supervision | CNN | Identification and localization of abnormalities in the X-rays |
| 5 | Sharma et al. [ | An Analysis Of Convolutional Neural Networks For Image Classification | CNN | The paper focusses on the analysis of real time images of three types of CNN's; these are AlexNets, GoogLeNet, and ResNet50 |
| 6 | Yao et al. [ | Learning to diagnose from scratch by exploiting dependencies among labels | LSTM | Used long short-term memory networks for distinction between chest diseases |
| 7 | Esteva et al. [ | Dermatologist-Level Classification of Skin Cancer with Deep Neural Networks | t-SNE-based NN | Analyzed the internal features of the cells by using the CNN with the t-distributed stochastic neighbor embedding |
| 8 | Wang et al. [ | ChestX-ray8: Hospital-Scale Chest X-Ray Database and Benchmarks on Weakly-Supervised Classification and Localization of Common Thorax Diseases | CNN | The work focusses on how thoracic ailments can be discovered and explicitly located with the help of a combined softly supervised multilabelled image sorting and ailment localization framework; the same is verified with the dataset used in the paper |
Figure 1A convolutional neural network.
Figure 2Block diagram of Chester—the chest disease predictor.
Comparing our proposed work with existing work on considered metrics.
| S. No. | Previous work/model | Precision | Recall |
| Accuracy |
|---|---|---|---|---|---|
| 1. | Disease Detection from Lung X-Ray Images Based on Hybrid Deep Learning [ | 0.63 | 0.69 | 0.68 | 0.71 |
| 2. | The proposed model for disease prediction | 0.77571 | 0.63098 | 0.76043 | 0.80056 |
Figure 3Testing on images for the output.
Figure 4Testing on images for the output.