Intervention of Deep Learning Model for Predicting Lung Cancer Using Histopathological Images
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Abstract
Lung cancer remains one of the leading causes of cancer-related deaths worldwide, with
accurate and timely diagnosis being crucial for effective treatment. This thesis presents a novel
approach to lung cancer subtype classification using histopathological images and deep
learning techniques.
Chapter 1 introduce the significance of lung cancer detection and the potential of automated
classification systems in assisting pathologists. The chapter outlines the research objectives and
the potential impact of this study on improving diagnostic accuracy and efficiency.
Chapter 2 provides a comprehensive literature review, examining existing methods for lung
cancer detection and classification. It highlights the advancements in deep learning techniques,
particularly the use of convolutional neural networks in medical image analysis.
Chapter 3 details the methodology employed in this study. We describe the modified U-Net
architecture used for lung cancer subtype classification and explain four different preprocessing
techniques: no pre-processing, Super-Resolution Convolutional Neural Network
(SRCNN), Super-Resolution Generative Adversarial Network (SRGAN), and Contrast Limited
Adaptive Histogram Equalization (CLAHE).
In Chapter 4, we present and analyze the experimental results. The performance of our model
is evaluated using metrics such as accuracy, precision, recall, F1 score, specificity, and AUCROC
score. We compare the effectiveness of different pre-processing techniques and provide
visual representations of our results through accuracy/loss curves, ROC curves, and confusion
matrices.
Research findings indicate that the SRGAN pre-processing method yielded the highest overall
accuracy of 96% in classifying lung cancer subtypes. The model demonstrated robust
performance across all three subtypes, with particular strength in distinguishing between
subtypes Lung Benign and Adenocarcinomas.
Chapter 5 concludes the thesis by summarizing the key findings and discussing their
implications for lung cancer diagnosis. We also address the propose directions for future
research.
This study contributes to the field of medical image analysis by demonstrating the potential of
deep learning models in lung cancer subtype classification. The proposed method shows
promise in assisting pathologists, potentially leading to more accurate and efficient diagnoses.
