改进脑肿瘤诊断:随机森林集成的自校准一维残差网络。

IF 2.7 4区 医学 Q3 NEUROSCIENCES
A. Sumithra , P.M. Joe Prathap , A. Karthikeyan , S. Dhanasekaran
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引用次数: 0

摘要

医学专家需要进行精确的核磁共振分析来准确诊断脑肿瘤。目前的研究已经开发了多种用于脑肿瘤识别过程自动化的人工智能(AI)技术。然而,现有的方法往往依赖于单一的数据集,限制了它们在不同临床情况下的泛化能力。该研究介绍了SCR-1DResNet作为一种新的脑肿瘤检测诊断工具,它结合了自校准随机森林和一维残差网络。研究从多个Kaggle数据集的MRI图像采集开始,然后进行逐步处理,消除噪声,增强图像,进行调整大小和规范化,并进行颅骨剥离操作。数据收集后,WaveSegNet模式l在多个尺度上提取肿瘤的重要属性。随机森林分类器的组成部分与一维残差网络通过自标定优化形成SCR-1DResNet模型,提高预测可靠性。实验表明,该系统的分类精度为98.50%,准确率为98.80%,召回率为97.80%。SCR-1DResNet模型显示出卓越的诊断能力和提高的性能速度,在临床决策支持系统和改善神经和肿瘤患者治疗方面显示出强大的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving brain tumor diagnosis: A self-calibrated 1D residual network with random forest integration
Medical specialists need to perform precise MRI analysis for accurate diagnosis of brain tumors. Current research has developed multiple artificial intelligence (AI) techniques for the process automation of brain tumor identification. However, existing approaches often depend on singular datasets, limiting their generalization capabilities across diverse clinical scenarios. The research introduces SCR-1DResNet as a new diagnostic tool for brain tumor detection that incorporates self-calibrated Random Forest along with one-dimensional residual networks. The research starts with MRI image acquisition from multiple Kaggle datasets then proceeds through stepwise processing that eliminates noise, enhances images, and performs resizing and normalization and conducts skull stripping operations. After data collection the WaveSegNet mode l extracts important attributes from tumors at multiple scales. Components of Random Forest classifier together with One-Dimensional Residual Network form the SCR-1DResNet model via self-calibration optimization to improve prediction reliability. Tests show the proposed system produces classification precision of 98.50% accompanied by accuracy of 98.80% and recall reaching 97.80% respectively. The SCR-1DResNet model demonstrates superior diagnostic capability and enhanced performance speed which shows strong prospects towards clinical decision support systems and improved neurological and oncological patient treatments.
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来源期刊
Brain Research
Brain Research 医学-神经科学
CiteScore
5.90
自引率
3.40%
发文量
268
审稿时长
47 days
期刊介绍: An international multidisciplinary journal devoted to fundamental research in the brain sciences. Brain Research publishes papers reporting interdisciplinary investigations of nervous system structure and function that are of general interest to the international community of neuroscientists. As is evident from the journals name, its scope is broad, ranging from cellular and molecular studies through systems neuroscience, cognition and disease. Invited reviews are also published; suggestions for and inquiries about potential reviews are welcomed. With the appearance of the final issue of the 2011 subscription, Vol. 67/1-2 (24 June 2011), Brain Research Reviews has ceased publication as a distinct journal separate from Brain Research. Review articles accepted for Brain Research are now published in that journal.
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