利用小样本放疗计划计算机断层扫描图像进行基于深度学习的自动肝脏轮廓绘制。

IF 2.5 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Radiography Pub Date : 2024-08-01 DOI:10.1016/j.radi.2024.08.005
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引用次数: 0

摘要

简介还没有研究调查过基于深度学习的肝脏轮廓绘制所需的最小数据量。因此,本研究旨在调查使用有限数据自动绘制肝脏轮廓的可行性:放疗计划 计算机断层扫描(CT)图像经过各种预处理方法,如去噪和开窗。使用改进的注意力 U-Net 和残差 U-Net 网络进行分割。针对不同的训练规模,分别训练了两种不同的修正网络。对于每种架构,都选择了训练集规模最大、骰子相似系数(DSC)得分最高的模型进行进一步评估。此外,还使用了与训练集分布不同的两个未见外部数据集,以检验建议方法的通用性:结果:使用 62 个训练案例,经修改的残差 U-Net 和注意力 U-Net 网络在测试集上的平均 DSC 分别达到 97.62% 和 96.48%。修改后的残差 U-Net 和注意力 U-Net 网络的平均豪斯多夫距离(AHD)分别为 0.57 毫米和 0.71 毫米。此外,修改后的残差 U-Net 和注意力 U-Net 网络还在两个未见的外部数据集上进行了测试,来自另一个中心的数据和腹部 CT-1K 数据集的 DSC 分别达到了 95.35% 和 95.82%,DSC 分别达到了 95.16% 和 94.93%:本研究表明,深度学习模型可以使用少量训练集准确分割肝脏。该方法利用简单的预处理和修改后的网络架构,在未见过的数据集上表现出很强的性能,表明其具有普适性:这一充满希望的结果表明,它在放疗计划中的自动肝脏轮廓划分方面具有潜力。
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Deep learning-based automated liver contouring using a small sample of radiotherapy planning computed tomography images

Introduction

No study has yet investigated the minimum amount of data required for deep learning-based liver contouring. Therefore, this study aimed to investigate the feasibility of automated liver contouring using limited data.

Methods

Radiotherapy planning Computed tomography (CT) images were subjected to various preprocessing methods, such as denoising and windowing. Segmentation was conducted using the modified Attention U-Net and Residual U-Net networks. Two different modified networks were trained separately for different training sizes. For each architecture, the model trained with the training set size that achieved the highest dice similarity coefficient (DSC) score was selected for further evaluation. Two unseen external datasets with different distributions from the training set were also used to examine the generalizability of the proposed method.

Results

The modified Residual U-Net and Attention U-Net networks achieved average DSCs of 97.62% and 96.48%, respectively, on the test set, using 62 training cases. The average Hausdorff distances (AHDs) for the modified Residual U-Net and Attention U-Net networks were 0.57 mm and 0.71 mm, respectively. Also, the modified Residual U-Net and Attention U-Net networks were tested on two unseen external datasets, achieving DSCs of 95.35% and 95.82% for data from another center and 95.16% and 94.93% for the AbdomenCT-1K dataset, respectively.

Conclusion

This study demonstrates that deep learning models can accurately segment livers using a small training set. The method, utilizing simple preprocessing and modified network architectures, shows strong performance on unseen datasets, indicating its generalizability.

Implications for practice

This promising result suggests its potential for automated liver contouring in radiotherapy planning.

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来源期刊
Radiography
Radiography RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.70
自引率
34.60%
发文量
169
审稿时长
63 days
期刊介绍: Radiography is an International, English language, peer-reviewed journal of diagnostic imaging and radiation therapy. Radiography is the official professional journal of the College of Radiographers and is published quarterly. Radiography aims to publish the highest quality material, both clinical and scientific, on all aspects of diagnostic imaging and radiation therapy and oncology.
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