肝癌诊断:改进特征集的增强型深度 Maxout 模型

IF 1.8 4区 医学 Q3 ONCOLOGY Cancer Investigation Pub Date : 2024-09-01 Epub Date: 2024-08-27 DOI:10.1080/07357907.2024.2391359
Vinnakota Sai Durga Tejaswi, Venubabu Rachapudi
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引用次数: 0

摘要

这项工作提出了一种肝癌分类方案,包括预处理、特征提取和分类三个阶段。使用高斯滤波对源图像进行预处理。在分割方面,这项研究提出了基于 LUV 变换的自适应阈值分割流程。分割完成后,在此阶段将提取某些特征,包括基于多节点的特征、改进的局部三元模式(基于 LTP 的特征)和 GLCM 特征。在分类阶段,提出了一种用于肝癌检测的改进型深度 Maxout 模型。根据各种指标对所采用的方案与其他方案进行了评估。在学习率为 60% 的情况下,改进的 Deep maxout 模型在肝癌分类方面取得了较高的 F-measure 值(0.94);然而,之前的方法,如支持向量机(SVM)、随机森林(RF)、循环神经网络(RNN)、长短期记忆(LSTM)、K-近邻(KNN)、Deep maxout、卷积神经网络(CNN)和 DL 模型的 F-measure 值较低。与其他现有的肝癌分类模型相比,改进后的 Deep maxout 模型的假阳性率(FPR)和假阴性率(FNR)值最小,效果最好。
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Liver Cancer Diagnosis: Enhanced Deep Maxout Model with Improved Feature Set.

This work proposed a liver cancer classification scheme that includes Preprocessing, Feature extraction, and classification stages. The source images are pre-processed using Gaussian filtering. For segmentation, this work proposes a LUV transformation-based adaptive thresholding-based segmentation process. After the segmentation, certain features are extracted that include multi-texon based features, Improved Local Ternary Pattern (LTP-based features), and GLCM features during this phase. In the Classification phase, an improved Deep Maxout model is proposed for liver cancer detection. The adopted scheme is evaluated over other schemes based on various metrics. While the learning rate is 60%, an improved deep maxout model achieved a higher F-measure value (0.94) for classifying liver cancer; however, the previous method like Support Vector Machine (SVM), Random Forest (RF), Recurrent Neural Network (RNN), Long Short Term Memory (LSTM), K-Nearest Neighbor (KNN), Deep maxout, Convolutional Neural Network (CNN), and DL model holds less F-measure value. An improved deep maxout model achieved minimal False Positive Rate (FPR), and False Negative Rate (FNR) values with the best outcomes compared to other existing models for liver cancer classification.

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来源期刊
Cancer Investigation
Cancer Investigation 医学-肿瘤学
CiteScore
3.80
自引率
4.20%
发文量
71
审稿时长
8.5 months
期刊介绍: Cancer Investigation is one of the most highly regarded and recognized journals in the field of basic and clinical oncology. It is designed to give physicians a comprehensive resource on the current state of progress in the cancer field as well as a broad background of reliable information necessary for effective decision making. In addition to presenting original papers of fundamental significance, it also publishes reviews, essays, specialized presentations of controversies, considerations of new technologies and their applications to specific laboratory problems, discussions of public issues, miniseries on major topics, new and experimental drugs and therapies, and an innovative letters to the editor section. One of the unique features of the journal is its departmentalized editorial sections reporting on more than 30 subject categories covering the broad spectrum of specialized areas that together comprise the field of oncology. Edited by leading physicians and research scientists, these sections make Cancer Investigation the prime resource for clinicians seeking to make sense of the sometimes-overwhelming amount of information available throughout the field. In addition to its peer-reviewed clinical research, the journal also features translational studies that bridge the gap between the laboratory and the clinic.
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