From the Radiology Department (Y.Y., Y.X., T.T., M.P.M., G.Z.), Stanford University, California.
Electrical Engineering Department (E.G., J.O.), Stanford University, California.
AJNR Am J Neuroradiol. 2021 Jun;42(6):1030-1037. doi: 10.3174/ajnr.A7081. Epub 2021 Mar 25.
In acute stroke patients with large vessel occlusions, it would be helpful to be able to predict the difference in the size and location of the final infarct based on the outcome of reperfusion therapy. Our aim was to demonstrate the value of deep learning-based tissue at risk and ischemic core estimation. We trained deep learning models using a baseline MR image in 3 multicenter trials.
Patients with acute ischemic stroke from 3 multicenter trials were identified and grouped into minimal (≤20%), partial (20%-80%), and major (≥80%) reperfusion status based on 4- to 24-hour follow-up MR imaging if available or into unknown status if not. Attention-gated convolutional neural networks were trained with admission imaging as input and the final infarct as ground truth. We explored 3 approaches: 1) separate: train 2 independent models with patients with minimal and major reperfusion; 2) pretraining: develop a single model using patients with partial and unknown reperfusion, then fine-tune it to create 2 separate models for minimal and major reperfusion; and 3) thresholding: use the current clinical method relying on apparent diffusion coefficient and time-to-maximum of the residue function maps. Models were evaluated using area under the curve, the Dice score coefficient, and lesion volume difference.
Two hundred thirty-seven patients were included (minimal, major, partial, and unknown reperfusion: = 52, 80, 57, and 48, respectively). The pretraining approach achieved the highest median Dice score coefficient (tissue at risk = 0.60, interquartile range, 0.43-0.70; core = 0.57, interquartile range, 0.30-0.69). This was higher than the separate approach (tissue at risk = 0.55; interquartile range, 0.41-0.69; = .01; core = 0.49; interquartile range, 0.35-0.66; = .04) or thresholding (tissue at risk = 0.56; interquartile range, 0.42-0.65; = .008; core = 0.46; interquartile range, 0.16-0.54; < .001).
Deep learning models with fine-tuning lead to better performance for predicting tissue at risk and ischemic core, outperforming conventional thresholding methods.
在接受血管内再通治疗的大血管闭塞性急性脑卒中患者中,如果能够根据再通治疗的结果预测最终梗死灶的大小和部位差异,将会很有帮助。我们的目的是展示基于深度学习的危险组织和缺血核心估计的价值。我们使用 3 项多中心试验中的基线磁共振成像数据对深度学习模型进行了训练。
从 3 项多中心试验中识别并分组患者,如果在 4 至 24 小时随访磁共振成像中可见,则根据最小(≤20%)、部分(20%-80%)和主要(≥80%)再通状态进行分组,否则根据未知状态进行分组。使用入院影像学作为输入,以最终梗死灶作为ground truth,对带注意力的卷积神经网络进行训练。我们探索了 3 种方法:1)单独:使用最小和最大再通患者分别训练 2 个独立的模型;2)预训练:使用部分和未知再通患者开发单个模型,然后对其进行微调,为最小和最大再通分别创建 2 个单独的模型;3)阈值:使用当前依赖表观扩散系数和残留函数图时间至最大值的临床方法。使用曲线下面积、Dice 评分系数和病变体积差异来评估模型。
共纳入 237 例患者(最小、最大、部分和未知再通:分别为 52、80、57 和 48 例)。预训练方法获得了最高的中位数 Dice 评分系数(危险组织=0.60,四分位距,0.43-0.70;核心=0.57,四分位距,0.30-0.69)。这高于单独方法(危险组织=0.55;四分位距,0.41-0.69; =.01;核心=0.49;四分位距,0.35-0.66; =.04)或阈值方法(危险组织=0.56;四分位距,0.42-0.65; =.008;核心=0.46;四分位距,0.16-0.54; <.001)。
经过微调的深度学习模型在预测危险组织和缺血核心方面表现更好,优于传统的阈值方法。