Lung Cancer Lesion Detection in Histopathology Images Using Graph-Based Sparse PCA Network
Sundaresh Ram, Wenfei Tang, Alexander J. Bell, Cara Spencer, Alexander, Buschhaus, Charles R. Hatt, Marina Pasca diMagliano, Jeffrey J. Rodriguez,, Stefanie Galban, Craig J. Galban

TL;DR
This paper introduces a graph-based sparse PCA network for automated detection of lung cancer lesions in histopathology images, improving accuracy and efficiency over existing methods.
Contribution
The paper presents a novel GS-PCA network architecture that combines graph-based sparse PCA, PCA hashing, and SVM for lung cancer lesion detection in histopathology images.
Findings
Achieved higher detection accuracy than existing algorithms.
Demonstrated efficiency in processing histopathology slides.
Validated on mouse model data with strong performance metrics.
Abstract
Early detection of lung cancer is critical for improvement of patient survival. To address the clinical need for efficacious treatments, genetically engineered mouse models (GEMM) have become integral in identifying and evaluating the molecular underpinnings of this complex disease that may be exploited as therapeutic targets. Assessment of GEMM tumor burden on histopathological sections performed by manual inspection is both time consuming and prone to subjective bias. Therefore, an interplay of needs and challenges exists for computer-aided diagnostic tools, for accurate and efficient analysis of these histopathology images. In this paper, we propose a simple machine learning approach called the graph-based sparse principal component analysis (GS-PCA) network, for automated detection of cancerous lesions on histological lung slides stained by hematoxylin and eosin (H&E). Our method…
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Taxonomy
TopicsAI in cancer detection · Gene expression and cancer classification · Radiomics and Machine Learning in Medical Imaging
MethodsSupport Vector Machine · Principal Components Analysis
