Auto-Sklearn中调谐集合N-Best在乳腺x线放射学分析中乳腺癌预测中的应用。

IF 1.1 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Faikah Awang Ismail, Muhammad Khalis Abdul Karim, Siti Izzatul Akma Zaidon, Kaltham Abdulwahid Noor
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引用次数: 0

摘要

导言:乳腺癌是全球妇女死亡的主要原因。虽然乳房x光检查仍然是检测的金标准,但其解释往往受到放射科医生的差异和区分良性和恶性病变的挑战的限制。该研究探索了自动机器学习(AutoML)框架Auto- Sklearn的使用,用于基于乳房x线摄影放射学特征的乳腺肿瘤分类。方法:采用对比度有限自适应直方图均衡化(CLAHE)对244张乳腺x线摄影图像进行增强,并用主动轮廓法(ACM)进行分割。提取并标准化了37个放射学特征,包括一阶统计量、灰度共生矩阵(GLCM)纹理和形状特征。采用Auto-Sklearn实现模型选择、超参数调整和集成构建的自动化。数据集分为80%的训练集和20%的测试集。结果:初始Auto-Sklearn模型在训练集上的准确率为88.71%,在测试集上的准确率为55.10%。采用重采样策略后,训练集和测试集的准确率分别提高到95.26%和76.16%。Auto-Sklearn的标准和重采样策略的接收者工作曲线和曲线下面积(ROC-AUC)分别为0.660和0.840,优于传统模型,证明了其在自动化放射性分类任务中的有效性。讨论:研究结果强调了Auto-Sklearn使用手工制作的放射学特征自动化和增强肿瘤分类性能的能力。限制包括数据集大小和缺乏临床元数据。结论:本研究强调了Auto-Sklearn作为一种可扩展的、自动化的、临床相关的乳腺癌x线放射组学分类工具的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Tuning-ensemble N-Best in Auto-Sklearn for Mammographic Radiomic Analysis for Breast Cancer Prediction.

Introduction: Breast cancer is a major cause of mortality among women globally. While mammography remains the gold standard for detection, its interpretation is often limited by radiologist variability and the challenge of differentiating benign and malignant lesions. The study explores the use of Auto- Sklearn, an automated machine learning (AutoML) framework, for breast tumor classification based on mammographic radiomic features.

Methods: 244 mammographic images were enhanced using Contrast Limited Adaptive Histogram Equalization (CLAHE) and segmented with Active Contour Method (ACM). Thirty-seven radiomic features, including first-order statistics, Gray-Level Co-occurance Matrix (GLCM) texture and shape features were extracted and standardized. Auto-Sklearn was employed to automate model selection, hyperparameter tuning and ensemble construction. The dataset was divided into 80% training and 20% testing set.

Results: The initial Auto-Sklearn model achieved an 88.71% accuracy on the training set and 55.10% on the testing sets. After the resampling strategy was applied, the accuracy for the training set and testing set increased to 95.26% and 76.16%, respectively. The Receiver Operating Curve and Area Under Curve (ROC-AUC) for the standard and resampling strategy of Auto-Sklearn were 0.660 and 0.840, outperforming conventional models, demonstrating its efficiency in automating radiomic classification tasks.

Discussion: The findings underscore Auto-Sklearn's ability to automate and enhance tumor classification performance using handcrafted radiomic features. Limitations include dataset size and absence of clinical metadata.

Conclusion: This study highlights the application of Auto-Sklearn as a scalable, automated and clinically relevant tool for breast cancer classification using mammographic radiomics.

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来源期刊
CiteScore
2.60
自引率
0.00%
发文量
246
审稿时长
1 months
期刊介绍: Current Medical Imaging Reviews publishes frontier review articles, original research articles, drug clinical trial studies and guest edited thematic issues on all the latest advances on medical imaging dedicated to clinical research. All relevant areas are covered by the journal, including advances in the diagnosis, instrumentation and therapeutic applications related to all modern medical imaging techniques. The journal is essential reading for all clinicians and researchers involved in medical imaging and diagnosis.
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