2023
DOI: 10.11591/eei.v12i3.4579
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Intelligent deep learning algorithm for lung cancer detection and classification

Abstract: Lung cancer is one of the leading causes of cancer mortality. The overlapping of cancer cells makes early diagnosis difficult. When lung cancer is found early, many therapy choices are reduced, the danger of invasive surgery is reduced, and the chance of survival increases. The primary goal of this study work is to identify early-stage lung cancer and categories using an intelligent deep learning algorithm. Following a thorough review of the literature, we discovered that certain classifiers are ineffective wh… Show more

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Cited by 11 publications
(4 citation statements)
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References 24 publications
(29 reference statements)
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“…The convolutional neural network method that used in this study is successful in providing the CNN test results of 97.4% for the classification of clavicle bone images. Compared with other research that has carried out the CNN algorithm, such as to classify pneumonia detection on chest X-rays with a final accuracy percentage of 88.14% [34] and research on a new algorithm called improved dial's loading algorithm (IDLA) using a CNN model that combines digital CT image processing and machine learning to identify cancer cells through IDLA automatically with minimum iterations with an accuracy percentage of 92.81% [35], this research improves the results.…”
Section: Resultsmentioning
confidence: 95%
“…The convolutional neural network method that used in this study is successful in providing the CNN test results of 97.4% for the classification of clavicle bone images. Compared with other research that has carried out the CNN algorithm, such as to classify pneumonia detection on chest X-rays with a final accuracy percentage of 88.14% [34] and research on a new algorithm called improved dial's loading algorithm (IDLA) using a CNN model that combines digital CT image processing and machine learning to identify cancer cells through IDLA automatically with minimum iterations with an accuracy percentage of 92.81% [35], this research improves the results.…”
Section: Resultsmentioning
confidence: 95%
“…In 2019, M. Al-Shabi et al presented a gated dilated network-based technique, obtaining a higher classification accuracy of 92.57% [17]. In another research, it has been presented that the improved dial's algorithm (IDLA) method delivers better classification accuracy of pulmonary nodules with an accuracy level of 92.81% [18]. In 2023, a research paper was published, showing the potential of applying a weighted visual geometry group network (WVGN) to comprehend feature-related information and perform nodule classification with greater accuracy [19].…”
Section: Related Workmentioning
confidence: 99%
“…This research will apply the CNN method. The application of CNN has been carried out by several previous researchers and in various kinds of objects, as was done by [7]- [9] on health data. Winiarti et al [10] conducted pre-training using CNN and classification with SVM in the tanning leather image case.…”
mentioning
confidence: 99%