Two-Step Semi-Automated Classification of Choroidal Metastases on MRI: Orbit Localization via Bounding Boxes Followed by Binary Classification via Evolutionary Strategies.

Jeffrey S Shi, Bala McRae-Posani, Sofia Haque, Andrei Holodny, Hrithwik Shalu, Joseph Stember
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Abstract

Background and purpose: The choroid of the eye is a rare site for metastatic tumor spread, and as small lesions on the periphery of brain MRI studies, these choroidal metastases are often missed. To improve their detection, we aimed to use artificial intelligence to distinguish between brain MRI scans containing normal orbits and choroidal metastases.

Materials and methods: We present a novel hierarchical deep learning framework for sequential cropping and classification on brain MRI images to detect choroidal metastases. The key innovation of this approach lies in training an orbit localization network based on a YOLOv5 architecture to focus on the orbits, isolating the structures of interest and eliminating irrelevant background information. The initial sub-task of localization ensures that the input to the subsequent classification network is restricted to the precise anatomical region where choroidal metastases are likely to occur. In Step 1, we trained a localization network on 386 T2-weighted brain MRI axial slices from 97 patients. Using the localized orbit images from Step 1, in Step 2 we trained a binary classifier network with 33 normal and 33 choroidal metastasis-containing brain MRIs. To address the challenges posed by the small dataset, we employed a data-efficient evolutionary strategies approach, which has been shown to avoid both overfitting and underfitting in small training sets.

Results: Our orbit localization model identified globes with 100% accuracy and a mean Average Precision of Intersection over Union thresholds of 0.5 to 0.95 (mAP(0.5:0.95)) of 0.47 on held-out testing data. Similarly, the model generalized well to our Step 2 dataset which included orbits demonstrating pathologies, achieving 100% accuracy and mAP(0.5:0.95) of 0.44. mAP(0.5:0.95) appeared low because the model could not distinguish left and right orbits. Using the cropped orbits as inputs, our evolutionary strategies-trained convolutional neural network achieved a testing set area under the curve (AUC) of 0.93 (95% CI [0.83, 1.03]), with 100% sensitivity and 87% specificity at the optimal Youden's index.

Conclusions: The semi-automated pipeline from brain MRI slices to choroidal metastasis classification demonstrates the utility of a sequential localization and classification approach, and clinical relevance for identifying small, "corner-of-the-image", easily overlooked lesions.

Abbreviations: AI = artificial intelligence; AUC = area under the curve; CNN = convolutional neural network; DNE = deep neuroevolution; IoU = intersection over union; mAP = mean average precision; ROC = receiver operating characteristic.

MRI上脉络膜转移的两步半自动化分类:通过边界盒定位眼眶,然后通过进化策略进行二元分类。
背景与目的:眼脉络膜是肿瘤转移的罕见部位,在脑MRI研究中,由于周围的小病变,这些脉络膜转移经常被遗漏。为了改进它们的检测,我们旨在使用人工智能来区分包含正常轨道和脉络膜转移的脑MRI扫描。材料和方法:我们提出了一种新的分层深度学习框架,用于对脑MRI图像进行顺序裁剪和分类,以检测脉络膜转移。该方法的关键创新在于训练基于YOLOv5架构的轨道定位网络,使其专注于轨道,隔离感兴趣的结构并消除不相关的背景信息。定位的初始子任务确保后续分类网络的输入被限制在可能发生脉络膜转移的精确解剖区域。在步骤1中,我们对97例患者的386个t2加权脑MRI轴向切片进行了定位网络训练。使用步骤1的定位轨道图像,在步骤2中,我们训练了一个包含33个正常和33个含脉络膜转移的脑mri的二分类器网络。为了解决小数据集带来的挑战,我们采用了一种数据高效的进化策略方法,该方法已被证明可以避免小训练集的过拟合和欠拟合。结果:我们的轨道定位模型对地球的识别准确率为100%,在hold out测试数据上,Intersection over Union阈值的平均精度为0.5 ~ 0.95 (mAP(0.5:0.95))为0.47。同样,该模型可以很好地推广到我们的第2步数据集,其中包括显示病变的轨道,达到100%的准确率,mAP(0.5:0.95)为0.44。mAP(0.5:0.95)较低是因为模型无法区分左右轨道。使用裁剪的轨道作为输入,我们的进化策略训练的卷积神经网络获得了0.93 (95% CI[0.83, 1.03])的曲线下测试集面积(AUC),在最佳约登指数下具有100%的灵敏度和87%的特异性。结论:从脑MRI切片到脉膜转移分类的半自动流水线显示了顺序定位和分类方法的实用性,以及识别小的,“图像角落”,容易被忽视的病变的临床相关性。缩写:AI =人工智能;AUC =曲线下面积;CNN =卷积神经网络;深度神经进化;IoU =交/并;mAP =平均精度;ROC =受试者工作特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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