Szabó Botond K, Aspelin Peter, Wiberg Maria Kristoffersen
Division of Diagnostic Radiology, Center for Surgical Sciences, Karolinska Institutet, Karolinska University Hospital, 14186 Huddinge, Sweden.
Acad Radiol. 2004 Dec;11(12):1344-54. doi: 10.1016/j.acra.2004.09.006.
An artificial neural network (ANN)-based segmentation method was developed for dynamic contrast-enhanced magnetic resonance (MR) imaging of the breast and compared with quantitative and empiric parameter mapping techniques.
The study population was composed of 10 patients with seven malignant and three benign lesions undergoing dynamic MR imaging of the breast. All lesions were biopsied or surgically excised, and examined by means of histopathology. A T1-weighted 3D FLASH (fast low angle shot sequence) was acquired before and seven times after the intravenous administration of gadopentetate dimeglumine at a dose of 0.1 mmol/kg body weight. Motion artifacts on MR images were eliminated by voxel-based affine and nonrigid registration techniques. A two-layered feed-forward back-propagation network was created for pixel-by-pixel classification of signal intensity-time curves into benign/malignant tissue types. ANN output was statistically compared with percent-enhancement (E), signal enhancement ratio (SER), time-to-peak, subtracted signal intensity (SUB), pharmacokinetic parameter rate constant (k(ep)), and correlation coefficient to a predefined reference washout curve.
ANN was successfully applied to the classification of breast MR images identifying structures with benign or malignant enhancement kinetics. Correlation coefficient (logistic regression, odds ratio [OR] = 12.9; 95% CI: 7.7-21.8), k(ep) (OR = 1.8; 95% CI: 1.2-2.6), and time-to-peak (OR = 0.45; 95% CI: 0.3-0.7) were independently associated to ANN output classes. SER, E, and SUB were nonsignificant covariates.
ANN is capable of classifying breast lesions on MR images. Mapping correlation coefficient, k(ep) and time-to-peak showed the highest association with the ANN result.
开发了一种基于人工神经网络(ANN)的乳腺动态对比增强磁共振(MR)成像分割方法,并与定量和经验参数映射技术进行比较。
研究人群包括10例患有7个恶性病变和3个良性病变的患者,均接受了乳腺动态MR成像检查。所有病变均经活检或手术切除,并进行组织病理学检查。在静脉注射剂量为0.1 mmol/kg体重的钆喷酸葡胺之前和之后7次采集T1加权3D FLASH(快速低角度激发序列)图像。通过基于体素的仿射和非刚性配准技术消除MR图像上的运动伪影。创建了一个两层前馈反向传播网络,用于将信号强度-时间曲线逐像素分类为良性/恶性组织类型。将ANN输出与增强百分比(E)、信号增强率(SER)、达峰时间、减去的信号强度(SUB)、药代动力学参数速率常数(k(ep))以及与预定义参考洗脱曲线的相关系数进行统计学比较。
ANN成功应用于乳腺MR图像的分类,识别出具有良性或恶性增强动力学的结构。相关系数(逻辑回归,优势比[OR]=12.9;95%可信区间:7.7-21.8)、k(ep)(OR=1.8;95%可信区间:1.2-2.6)和达峰时间(OR=0.45;95%可信区间:0.3-0.7)与ANN输出类别独立相关。SER、E和SUB是无显著意义的协变量。
ANN能够对MR图像上的乳腺病变进行分类。映射相关系数、k(ep)和达峰时间与ANN结果的相关性最高。