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首页> 外文期刊>Frontiers in Medicine >Development of Combination Methods for Detecting Malignant Uptakes Based on Physiological Uptake Detection Using Object Detection With PET-CT MIP Images
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Development of Combination Methods for Detecting Malignant Uptakes Based on Physiological Uptake Detection Using Object Detection With PET-CT MIP Images

机译:基于使用PET-CT MIP图像的物体检测,基于生理摄取检测检测恶性摄取的组合方法的开发

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Deep learning technology is now used for medical imaging. YOLOv2 is an object detection model using deep learning. Here, we applied YOLOv2 to FDG-PET images to detect the physiological uptake on the images. We also investigated the detection precision of abnormal uptake by a combined technique with YOLOv2. Using 3,500 maximum intensity projection (MIP) images of 500 cases of whole-body FDG-PET examinations, we manually drew rectangular regions of interest with the size of each physiological uptake to create a dataset. Using YOLOv2, we performed image training as transfer learning by initial weight. We evaluated YOLOv2's physiological uptake detection by determining the intersection over union (IoU), average precision (AP), mean average precision (mAP), and frames per second (FPS). We also developed a combination method for detecting abnormal uptake by subtracting the YOLOv2-detected physiological uptake. We calculated the coverage rate, false-positive rate, and false-negative rate by comparing the combination method-generated color map with the abnormal findings identified by experienced radiologists. The APs for physiological uptakes were: brain, 0.993; liver, 0.913; and bladder, 0.879. The mAP was 0.831 for all classes with the IoU threshold value 0.5. Each subset's average FPS was 31.60 ± 4.66. The combination method's coverage rate, false-positive rate, and false-negative rate for detecting abnormal uptake were 0.9205 ± 0.0312, 0.3704 ± 0.0213, and 0.1000 ± 0.0774, respectively. The physiological uptake of FDG-PET on MIP images was quickly and precisely detected using YOLOv2. The combination method, which can be utilized the characteristics of the detector by YOLOv2, detected the radiologist-identified abnormalities with a high coverage rate. The detectability and fast response would thus be useful as a diagnostic tool.
机译:深度学习技术现在用于医学成像。 YOLOV2是使用深度学习的对象检测模型。在这里,我们将YOLOV2应用于FDG-PET图像以检测图像上的生理摄取。我们还通过Yolov2通过组合技术调查了异常摄取的检测精度。使用500例全身FDG-PET检查的3,500个最大强度投影(MIP)图像,我们手动吸引矩形区域,每个生理摄取的大小创建数据集。使用YOLOV2,我们通过初始重量进行图像培训作为转移学习。我们通过确定联盟(IOU),平均精度(AP),平均精度(MAP)和每秒帧(FPS)的交叉来评估YOLOV2的生理摄取检测。我们还开发了一种用于通过减去yolov2检测到的生理摄取来检测异常摄取的组合方法。通过将组合方法生成的颜色图与经验丰富的放射科学家识别的异常发现来计算覆盖率,假阳性率和假阴性率。生理上升的AP是:大脑,0.993;肝脏,0.913;和膀胱,0.879。对于IOO阈值0.5的所有类,地图为0.831。每个子集的平均FPS为31.60±4.66。组合方法的覆盖率,假阳性率和用于检测异常摄取的假阴性速率分别为0.9205±0.0312,0.3704±0.0213和0.1000±0.0774。使用yolov2快速且精确地检测到MIP图像上FDG-PET的生理摄取。可以利用yolov2来利用检测器特性的组合方法检测到具有高覆盖率的放射科医师鉴定的异常。因此,可检测性和快速响应将可用作诊断工具。

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