Medical Image Optimisation and Perception Group, Discipline of Medical Imaging Science, Sydney School of Health Sciences, Faculty of Medicine and Health, The University of Sydney, Sydney, NSW 2006, Australia.
Br J Radiol. 2024 Jan 23;97(1153):168-179. doi: 10.1093/bjr/tqad025.
Radiologists can detect the gist of abnormal based on their rapid initial impression on a mammogram (ie, global gist signal [GGS]). This study explores (1) whether global radiomic (ie, computer-extracted) features can predict the GGS; and if so, (ii) what features are the most important drivers of the signals.
The GGS of cases in two extreme conditions was considered: when observers detect a very strong gist (high-gist) and when the gist of abnormal was not/poorly perceived (low-gist). Gist signals/scores from 13 observers reading 4191 craniocaudal mammograms were collected. As gist is a noisy signal, the gist scores from all observers were averaged and assigned to each image. The high-gist and low-gist categories contained all images in the fourth and first quartiles, respectively. One hundred thirty handcrafted global radiomic features (GRFs) per mammogram were extracted and utilized to construct eight separate machine learning random forest classifiers (All, Normal, Cancer, Prior-1, Prior-2, Missed, Prior-Visible, and Prior-Invisible) for characterizing high-gist from low-gist images. The models were trained and validated using the 10-fold cross-validation approach. The models' performances were evaluated by the area under receiver operating characteristic curve (AUC). Important features for each model were identified through a scree test.
The Prior-Visible model achieved the highest AUC of 0.84 followed by the Prior-Invisible (0.83), Normal (0.82), Prior-1 (0.81), All (0.79), Prior-2 (0.77), Missed (0.75), and Cancer model (0.69). Cluster shade, standard deviation, skewness, kurtosis, and range were identified to be the most important features.
Our findings suggest that GRFs can accurately classify high- from low-gist images.
Global mammographic radiomic features can accurately predict high- from low-gist images with five features identified to be valuable in describing high-gist images. These are critical in providing better understanding of the mammographic image characteristics that drive the strength of the GGSs which could be exploited to advance breast cancer (BC) screening and risk prediction, enabling early detection and treatment of BC thereby further reducing BC-related deaths.
放射科医生可以根据他们在乳房 X 光片上的快速初步印象来检测异常的要点(即全局要点信号[GGS])。本研究探讨了:(1)全局放射组学(即计算机提取)特征是否可以预测 GGS;如果可以,(2)哪些特征是信号的最重要驱动因素。
考虑了两种极端情况下的 GGS:当观察者检测到非常强烈的要点(高要点)时,以及当异常的要点未被感知或感知较差时(低要点)。收集了 13 位观察者阅读的 4191 张头尾位乳房 X 光片的要点信号/评分。由于要点是一种嘈杂的信号,因此平均了所有观察者的要点评分并分配给每张图像。高要点和低要点类别分别包含四分位数第四和第一四分位数中的所有图像。每幅乳房 X 光片提取 130 个手工全局放射组学特征(GRFs),并利用这些特征构建了八个独立的机器学习随机森林分类器(全部、正常、癌症、先验-1、先验-2、漏诊、先验可见和先验不可见),用于从低要点图像中对高要点进行特征化。使用 10 折交叉验证方法对模型进行训练和验证。通过接收者操作特征曲线(AUC)下的面积来评估模型的性能。通过峭度测试确定每个模型的重要特征。
Prior-Visible 模型的 AUC 最高,为 0.84,其次是 Prior-Invisible(0.83)、Normal(0.82)、Prior-1(0.81)、All(0.79)、Prior-2(0.77)、Missed(0.75)和 Cancer 模型(0.69)。鉴定出聚类阴影、标准差、偏度、峰度和范围是最重要的特征。
我们的研究结果表明,GRFs 可以准确地对高要点和低要点图像进行分类。
全局乳腺放射组学特征可以准确地预测高要点和低要点图像,确定了五个有价值的特征来描述高要点图像。这些特征对于理解驱动 GGS 强度的乳腺 X 光图像特征至关重要,这可能有助于推进乳腺癌(BC)筛查和风险预测,实现 BC 的早期检测和治疗,从而进一步降低与 BC 相关的死亡。