人工智能
计算机科学
卷积神经网络
超参数
体素
模式识别(心理学)
交叉口(航空)
目标检测
计算机视觉
医学影像学
对象(语法)
深度学习
工程类
航空航天工程
作者
Joseph D. Sobek,José R. Medina‐Inojosa,Betsy J. Medina Inojosa,Seyed Moein Rassoulinejad-Mousavi,Gian Marco Conte,Francisco López-Jiménez,Bradley J. Erickson
出处
期刊:
日期:2024-06-06
卷期号:37 (6): 3208-3216
被引量:45
标识
DOI:10.1007/s10278-024-01138-2
摘要
Artificial intelligence-enhanced identification of organs, lesions, and other structures in medical imaging is typically done using convolutional neural networks (CNNs) designed to make voxel-accurate segmentations of the region of interest. However, the labels required to train these CNNs are time-consuming to generate and require attention from subject matter experts to ensure quality. For tasks where voxel-level precision is not required, object detection models offer a viable alternative that can reduce annotation effort. Despite this potential application, there are few options for general-purpose object detection frameworks available for 3-D medical imaging. We report on MedYOLO, a 3-D object detection framework using the one-shot detection method of the YOLO family of models and designed for use with medical imaging. We tested this model on four different datasets: BRaTS, LIDC, an abdominal organ Computed tomography (CT) dataset, and an ECG-gated heart CT dataset. We found our models achieve high performance on a diverse range of structures even without hyperparameter tuning, reaching mean average precision (mAP) at intersection over union (IoU) 0.5 of 0.861 on BRaTS, 0.715 on the abdominal CT dataset, and 0.995 on the heart CT dataset. However, the models struggle with some structures, failing to converge on LIDC resulting in a mAP@0.5 of 0.0.
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