Semi-supervised Learning for Generalizable Intracranial Hemorrhage Detection and Segmentation.

IF 8.1 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Emily Lin, Esther L Yuh
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引用次数: 0

Abstract

Purpose To develop and evaluate a semi-supervised learning model for intracranial hemorrhage detection and segmentation on an out-of-distribution head CT evaluation set. Materials and Methods This retrospective study used semi-supervised learning to bootstrap performance. An initial "teacher" deep learning model was trained on 457 pixel-labeled head CT scans collected from one U.S. institution from 2010 to 2017 and used to generate pseudo labels on a separate unlabeled corpus of 25 000 examinations from the Radiological Society of North America and American Society of Neuroradiology. A second "student" model was trained on this combined pixel- and pseudo-labeled dataset. Hyperparameter tuning was performed on a validation set of 93 scans. Testing for both classification (n = 481 examinations) and segmentation (n = 23 examinations, or 529 images) was performed on CQ500, a dataset of 481 scans performed in India, to evaluate out-of-distribution generalizability. The semi-supervised model was compared with a baseline model trained on only labeled data using area under the receiver operating characteristic curve, Dice similarity coefficient, and average precision metrics. Results The semi-supervised model achieved a statistically significant higher examination area under the receiver operating characteristic curve on CQ500 compared with the baseline (0.939 [95% CI: 0.938, 0.940] vs 0.907 [95% CI: 0.906, 0.908]; P = .009). It also achieved a higher Dice similarity coefficient (0.829 [95% CI: 0.825, 0.833] vs 0.809 [95% CI: 0.803, 0.812]; P = .012) and pixel average precision (0.848 [95% CI: 0.843, 0.853]) vs 0.828 [95% CI: 0.817, 0.828]) compared with the baseline. Conclusion The addition of unlabeled data in a semi-supervised learning framework demonstrates stronger generalizability potential for intracranial hemorrhage detection and segmentation compared with a supervised baseline. Keywords: Semi-supervised Learning, Traumatic Brain Injury, CT, Machine Learning Supplemental material is available for this article. Published under a CC BY 4.0 license. See also the commentary by Swimburne in this issue.

用于颅内出血检测和分割的半监督学习。
"刚刚接受 "的论文经过同行评审,已被接受在《放射学》上发表:人工智能》上发表。这篇文章在以最终版本发表之前,还将经过校对、排版和校对审核。请注意,在制作最终校对稿的过程中,可能会发现影响文章内容的错误。目的 在分布外头部 CT 评估集上开发和评估用于颅内出血检测和分割的半监督学习模型。材料与方法 这项回顾性研究使用半监督学习来引导性能。最初的 "教师 "深度学习模型是在 2010-2017 年间从一家美国机构收集的 457 个像素标记的头部 CT 扫描上训练的,并用于在来自 RSNA 和 ASNR 的 25,000 次检查的单独无标记语料库上生成伪标签。第二个 "学生 "模型是在这个像素与伪标签相结合的数据集上进行训练的。超参数调整在 93 个扫描的验证集上进行。分类(n = 481 次检查)和分割(n = 23 次检查,或 529 张图像)测试在 CQ500(印度进行的 481 次扫描的数据集)上进行,以评估分布外的通用性。使用接收者工作特征曲线下面积 (AUC)、Dice 相似性系数 (DSC) 和平均精确度 (AP) 指标,将半监督模型与仅在标记数据上训练的基线模型进行比较。结果 与基线模型相比,半监督模型在 CQ500 上的检查 AUC 明显更高(0.939 [0.938, 0.940] 对 0.907 [0.906, 0.908])(P = .009)。与基线相比,DSC(0.829 [0.825, 0.833] 对 0.809 [0.803, 0.812])(P = .012)和 Pixel AP(0.848 [0.843, 0.853])对 0.828 [0.817, 0.828])也更高。结论 与监督基线相比,在半监督学习框架中加入无标记数据,可为颅内出血检测和分割提供更强的通用性。©RSNA, 2024.
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来源期刊
CiteScore
16.20
自引率
1.00%
发文量
0
期刊介绍: Radiology: Artificial Intelligence is a bi-monthly publication that focuses on the emerging applications of machine learning and artificial intelligence in the field of imaging across various disciplines. This journal is available online and accepts multiple manuscript types, including Original Research, Technical Developments, Data Resources, Review articles, Editorials, Letters to the Editor and Replies, Special Reports, and AI in Brief.
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