利用 T1 加权磁共振成像对早期检测阿尔茨海默氏症痴呆症的放射组学评估。

IF 2.5 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Radiography Pub Date : 2024-08-01 DOI:10.1016/j.radi.2024.06.016
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引用次数: 0

摘要

导言:阿尔茨海默病(AD)是导致痴呆症的最常见病因,是一种全球性健康危机,预计到 2050 年全球发病率将增加两倍,因此迫切需要早期诊断以延缓病情发展并改善患者的生活质量。我们的项目旨在通过放射组学特征识别细微的神经解剖学变化,在早期阶段检测出痴呆症,从而提供更准确的诊断:方法:我们采用 AssemblyNet 分割模型,利用 416 名患者的匿名 T1 MRI 扫描图像分析大脑变化。对于每个分割标签,我们都提取了辐射组学特征。在对 Radiomic 特征进行预处理后,我们以 70%/20%/10% 的训练、验证和测试比例对梯度助推器、随机森林、支持向量分类器和 XGBoost 四种模型进行了训练。结果:我们对 208 个 T1 加权核磁共振成像扫描进行了分割,每个患者有 132 个分割标签,每个分割有 1130 个 Radiomic 特征,总计超过 3100 万个特征。所有四种模型的准确率都在 0.71 到 0.86 之间,其中准确率最高的机器学习模型是 XGBoost,对左下侧脑室的分割准确率达到了 0.86:结论:我们的研究利用T1加权核磁共振成像扫描进行分割,结果发现机器学习模型XGBoost对早期AD诊断的准确率很高,最高准确率达到0.86。未来的研究应着眼于扩大数据集和完善方法,以实现更广泛的适用性:对实践的启示:使用T1加权核磁共振成像扫描进行早期AD检测的放射组学可大幅提高诊断准确性,从而实现早期干预,延缓疾病进展并改善预后,因此需要放射技师采用更先进的成像技术和分析工具,并接受额外培训,以有效解读复杂的放射组学数据。
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Radiomics evaluation for the early detection of Alzheimer's dementia using T1-weighted MRI

Introduction

Alzheimer's disease (AD), the most common cause of dementia, presents a global health crisis with its prevalence expected to triple worldwide by 2050, emphasizing the urgent need for early diagnosis to delay progression and improve patient quality of life. Our project aims to detect AD in its early phase by identifying subtle neuroanatomical changes with Radiomics features, offering a more accurate diagnosis.

Methods

The AssemblyNet segmentation model was used to analyze brain changes by employing anonymized T1 MRI scans from 416 patients. For each segmented label we extracted Radiomic features. After preprocessing of Radiomic features we trained four models, Gradient Booster, Random Forest, Support Vector Classifier, and XGBoost, in a 70%/20%/10% train, validation and test split. All models were hyperparameter tuned with GridSearch, Cross validation and evaluated with accuracy on the test data.

Results

208 T1-weighted MRI scans were segmented, with 132 segmentation labels per patient, 1130 Radiomic features per segmentation, totalling in over 31 million features. For all four models we achieved accuracies between 0.71 and 0.86, and the machine learning model with highest accuracy were XGBoost, achieving an accuracy at 0.86 on the segmentation of the left inferior lateral ventricle.

Conclusion

Our study's use of segmentation on T1-weighted MRI scans resulted promising accuracies for early AD diagnosis with the machine learning model XGBoost, peaking at 0.86 accuracy. Future research should aim to expand datasets and refine methodologies for broader applicability.

Implication for practice

Implementing Radiomics for early AD detection using T1-weighted MRI scans could substantially improve diagnostic accuracy, enabling earlier interventions that may delay disease progression and improve outcomes, thereby requiring radiographers to adopt more advanced imaging techniques and analysis tools, as well as additional training to effectively interpret complex Radiomic data.

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来源期刊
Radiography
Radiography RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.70
自引率
34.60%
发文量
169
审稿时长
63 days
期刊介绍: Radiography is an International, English language, peer-reviewed journal of diagnostic imaging and radiation therapy. Radiography is the official professional journal of the College of Radiographers and is published quarterly. Radiography aims to publish the highest quality material, both clinical and scientific, on all aspects of diagnostic imaging and radiation therapy and oncology.
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