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A Deep Learning-Based Automated CT Segmentation of Prostate Cancer Anatomy for Radiation Therapy Planning-A Retrospective Multicenter Study

机译:基于深度学习的癌症癌症解剖学的深度学习自动化CT分割用于放射治疗规划 - 一种回顾性多中心研究

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摘要

A commercial deep learning (DL)-based automated segmentation tool (AST) for computed tomography (CT) is evaluated for accuracy and efficiency gain within prostate cancer patients. Thirty patients from six clinics were reviewed with manual- (MC), automated- (AC) and automated and edited (AEC) contouring methods. In the AEC group, created contours (prostate, seminal vesicles, bladder, rectum, femoral heads and penile bulb) were edited, whereas the MC group included empty datasets for MC. In one clinic, lymph node CTV delineations were evaluated for interobserver variability. Compared to MC, the mean time saved using the AST was 12 min for the whole data set (46%) and 12 min for the lymph node CTV (60%), respectively. The delineation consistency between MC and AEC groups according to the Dice similarity coefficient (DSC) improved from 0.78 to 0.94 for the whole data set and from 0.76 to 0.91 for the lymph nodes. The mean DSCs between MC and AC for all six clinics were 0.82 for prostate, 0.72 for seminal vesicles, 0.93 for bladder, 0.84 for rectum, 0.69 for femoral heads and 0.51 for penile bulb. This study proves that using a general DL-based AST for CT images saves time and improves consistency.
机译:用于计算断层扫描(CT)的商业深度学习(DL)自动分割工具(AST),以获得前列腺癌患者的准确性和效率增益。六名诊所患者用手动 - (MC),自动化(AC)和自动化和编辑(AEC)轮廓方法进行审查。在AEC组中,编辑了创建的轮廓(前列腺,开创性囊泡,膀胱,直肠,股骨头和阴茎灯泡),而MC组包括用于MC的空数据集。在一种临床中,评估淋巴结CTV划分,用于Interobserver变异性。与MC相比,使用AST保存的平均时间为12分钟,分别为淋巴结CTV(60%)的整个数据集(46%)和12分钟。根据骰子相似度系数(DSC)的MC和AEC组之间的描绘一致性从0.78到0.94改善整个数据集,淋巴结的0.76〜0.91。所有六种诊所的MC和AC之间的平均DSC为前列腺为0.82,对于精髓囊泡为0.72,膀胱为0.93,直肠0.84,股骨头0.69,阴茎灯泡为0.51。本研究证明,使用一般的基于DL的AST对于CT图像节省时间并提高一致性。

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