Spectral Machine Learning for Pancreatic Mass Imaging Classification
Yiming Liu, Ying Chen, Guangming Pan, Weichung Wang, Wei-Chih Liao,, Yee Liang Thian, Cheng E. Chee, Constantinos P. Anastassiades

TL;DR
This paper introduces a spectral machine learning approach for pancreatic mass classification using CT images, achieving high accuracy and efficiency with a novel combination of spectral analysis and advanced classifiers.
Contribution
The study presents a new spectral machine learning method that improves pancreatic mass diagnosis accuracy and computational efficiency using eigenvector-based feature selection and spectral pixel filtering.
Findings
94.6% test accuracy in classification
Automatic selection of fundamental images per patient
Diagnosis of 113 patients in 75 seconds on a standard laptop
Abstract
We present a novel spectral machine learning (SML) method in screening for pancreatic mass using CT imaging. Our algorithm is trained with approximately 30,000 images from 250 patients (50 patients with normal pancreas and 200 patients with abnormal pancreas findings) based on public data sources. A test accuracy of 94.6 percents was achieved in the out-of-sample diagnosis classification based on a total of approximately 15,000 images from 113 patients, whereby 26 out of 32 patients with normal pancreas and all 81 patients with abnormal pancreas findings were correctly diagnosed. SML is able to automatically choose fundamental images (on average 5 or 9 images for each patient) in the diagnosis classification and achieve the above mentioned accuracy. The computational time is 75 seconds for diagnosing 113 patients in a laptop with standard CPU running environment. Factors that influenced…
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Taxonomy
TopicsPancreatic and Hepatic Oncology Research · AI in cancer detection · Radiomics and Machine Learning in Medical Imaging
