Liver metastasis early detection using fMRI based statistical model

M. Freiman, Y. Edrei, E. Gross, Leo Joskowicz, R. Abramovitch
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引用次数: 6

Abstract

We present a novel method for computer aided early detection of liver metastases. The method used fMRI-based statistical modeling to characterize colorectal hepatic metastases and follow their early hemodynamical changes. Changes in hepatic hemodynamics were evaluated from T2*-W fMRI images acquired during the breathing of air, air-CO2, and carbogen. A classification model was built to differentiate between metastatic and healthy liver tissue. The model was constructed from 128 validated fMRI samples of metastatic and healthy mice liver tissue using histogram-based features and SVM classification engine. The model was subsequently tested with a set of 32 early, non-validated fMRI samples. Our model yielded an accuracy of 84.38% with 80% precision.
基于fMRI统计模型的肝转移早期检测
我们提出了一种计算机辅助早期检测肝转移的新方法。该方法采用基于功能磁共振成像的统计建模来表征结直肠肝转移,并跟踪其早期血流动力学变化。通过呼吸空气、空气-二氧化碳和碳时获得的T2*-W fMRI图像来评估肝脏血流动力学的变化。建立了一个分类模型来区分转移性和健康肝组织。该模型采用基于直方图的特征和SVM分类引擎,从128个经验证的转移性和健康小鼠肝组织fMRI样本中构建。该模型随后用一组32个早期的、未经验证的fMRI样本进行了测试。我们的模型的准确率为84.38%,精确度为80%。
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