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A Framework for Lung and Colon Cancer Diagnosis Via Lightweight Deep Learning Models and Transformation Methods

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Specialty Radiology
Date 2022 Dec 23
PMID 36552933
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Abstract

Among the leading causes of mortality and morbidity in people are lung and colon cancers. They may develop concurrently in organs and negatively impact human life. If cancer is not diagnosed in its early stages, there is a great likelihood that it will spread to the two organs. The histopathological detection of such malignancies is one of the most crucial components of effective treatment. Although the process is lengthy and complex, deep learning (DL) techniques have made it feasible to complete it more quickly and accurately, enabling researchers to study a lot more patients in a short time period and for a lot less cost. Earlier studies relied on DL models that require great computational ability and resources. Most of them depended on individual DL models to extract features of high dimension or to perform diagnoses. However, in this study, a framework based on multiple lightweight DL models is proposed for the early detection of lung and colon cancers. The framework utilizes several transformation methods that perform feature reduction and provide a better representation of the data. In this context, histopathology scans are fed into the ShuffleNet, MobileNet, and SqueezeNet models. The number of deep features acquired from these models is subsequently reduced using principal component analysis (PCA) and fast Walsh-Hadamard transform (FHWT) techniques. Following that, discrete wavelet transform (DWT) is used to fuse the FWHT's reduced features obtained from the three DL models. Additionally, the three DL models' PCA features are concatenated. Finally, the diminished features as a result of PCA and FHWT-DWT reduction and fusion processes are fed to four distinct machine learning algorithms, reaching the highest accuracy of 99.6%. The results obtained using the proposed framework based on lightweight DL models show that it can distinguish lung and colon cancer variants with a lower number of features and less computational complexity compared to existing methods. They also prove that utilizing transformation methods to reduce features can offer a superior interpretation of the data, thus improving the diagnosis procedure.

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References
1.
Wang Y, Coudray N, Zhao Y, Li F, Hu C, Zhang Y . HEAL: an automated deep learning framework for cancer histopathology image analysis. Bioinformatics. 2021; 37(22):4291-4295. DOI: 10.1093/bioinformatics/btab380. View

2.
Hasan M, Ali M, Rahman M, Islam M . Automated Detection and Characterization of Colon Cancer with Deep Convolutional Neural Networks. J Healthc Eng. 2023; 2022:5269913. PMC: 9873459. DOI: 10.1155/2022/5269913. View

3.
Taspinar Y, Cinar I, Koklu M . Classification by a stacking model using CNN features for COVID-19 infection diagnosis. J Xray Sci Technol. 2021; 30(1):73-88. DOI: 10.3233/XST-211031. View

4.
Jha D, Kim J, Choi M, Kwon G . Pathological Brain Detection Using Weiner Filtering, 2D-Discrete Wavelet Transform, Probabilistic PCA, and Random Subspace Ensemble Classifier. Comput Intell Neurosci. 2017; 2017:4205141. PMC: 5651159. DOI: 10.1155/2017/4205141. View

5.
Lakshmi P, Domnic S . Walsh-Hadamard transform kernel-based feature vector for shot boundary detection. IEEE Trans Image Process. 2014; 23(12):5187-97. DOI: 10.1109/TIP.2014.2362652. View