改进深度学习,在 T2 加权磁共振成像上自动定位和分割直肠癌。

IF 1.8 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Journal of Medical Radiation Sciences Pub Date : 2024-04-24 DOI:10.1002/jmrs.794
Zaixian Zhang PhD, Junqi Han MS, Weina Ji MS, Henan Lou MS, Zhiming Li PhD, Yabin Hu PhD, Mingjia Wang PhD, Baozhu Qi MS, Shunli Liu PhD
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引用次数: 0

摘要

简介从磁共振成像(MRI)中自动分割直肠癌的方法对于减轻医生的繁重工作量和提高工作效率非常有价值。本研究旨在比较一个拟议模型与其他三个模型的分割准确性以及观察者之间的一致性。方法本研究共纳入 65 名接受磁共振成像检查的直肠癌患者,并将其随机分为训练组(45 人)和验证组(20 人)。两名经验丰富的放射科医生独立对直肠癌病灶进行分割。基于 ResUNet 和注意力机制,在 T2WI 上训练了一个新的分割模型(AttSEResUNet)。使用 Dice 相似性系数 (DSC)、Hausdorff 距离 (HD)、平均一致距离 (MDA) 和 Jaccard 指数比较了 AttSEResUNet、U-Net、ResUNet 和带有注意门的 U-Net (AttUNet) 的分割性能。结果经过后处理的 AttSEResUNet 显示了完美的病变识别率(100%)和错误识别率(0),其评价指标优于其他三种模型,两位独立读者(观察者 1:DSC = 0.839 ± 0.112,HD = 9.55 ± 6.68,MDA = 0.556 ± 0.722,Jaccard 指数 = 0.736 ± 0.150;观察者 2:DSC = 0.856 ± 0.099,HD = 11.0 ± 10.1,MDA = 0.789 ± 1.07,Jaccard 指数 = 0.673 ± 0.130)。结论与其他三种模型相比,AttSEResUNet 模型在轴向 T2WI 图像的直肠肿瘤轮廓划分方面更为准确,其变异性与观察者之间的变异性相似。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Improved deep learning for automatic localisation and segmentation of rectal cancer on T2-weighted MRI

Introduction

The automatic segmentation approaches of rectal cancer from magnetic resonance imaging (MRI) are very valuable to relieve physicians from heavy workloads and enhance working efficiency. This study aimed to compare the segmentation accuracy of a proposed model with the other three models and the inter-observer consistency.

Methods

A total of 65 patients with rectal cancer who underwent MRI examination were enrolled in our cohort and were randomly divided into a training cohort (n = 45) and a validation cohort (n = 20). Two experienced radiologists independently segmented rectal cancer lesions. A novel segmentation model (AttSEResUNet) was trained on T2WI based on ResUNet and attention mechanisms. The segmentation performance of the AttSEResUNet, U-Net, ResUNet and U-Net with Attention Gate (AttUNet) was compared, using Dice similarity coefficient (DSC), Hausdorff distance (HD), mean distance to agreement (MDA) and Jaccard index. The segmentation variability of automatic segmentation models and inter-observer was also evaluated.

Results

The AttSEResUNet with post-processing showed perfect lesion recognition rate (100%) and false recognition rate (0), and its evaluation metrics outperformed other three models for two independent readers (observer 1: DSC = 0.839 ± 0.112, HD = 9.55 ± 6.68, MDA = 0.556 ± 0.722, Jaccard index = 0.736 ± 0.150; observer 2: DSC = 0.856 ± 0.099, HD = 11.0 ± 10.1, MDA = 0.789 ± 1.07, Jaccard index = 0.673 ± 0.130). The segmentation performance of AttSEResUNet was comparable and similar to manual variability (DSC = 0.857 ± 0.115, HD = 10.0 ± 10.0, MDA = 0.704 ± 1.17, Jaccard index = 0.666 ± 0.139).

Conclusion

Comparing with other three models, the proposed AttSEResUNet model was demonstrated as a more accurate model for contouring the rectal tumours in axial T2WI images, whose variability was similar to that of inter-observer.

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来源期刊
Journal of Medical Radiation Sciences
Journal of Medical Radiation Sciences RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
3.20
自引率
4.80%
发文量
69
审稿时长
8 weeks
期刊介绍: Journal of Medical Radiation Sciences (JMRS) is an international and multidisciplinary peer-reviewed journal that accepts manuscripts related to medical imaging / diagnostic radiography, radiation therapy, nuclear medicine, medical ultrasound / sonography, and the complementary disciplines of medical physics, radiology, radiation oncology, nursing, psychology and sociology. Manuscripts may take the form of: original articles, review articles, commentary articles, technical evaluations, case series and case studies. JMRS promotes excellence in international medical radiation science by the publication of contemporary and advanced research that encourages the adoption of the best clinical, scientific and educational practices in international communities. JMRS is the official professional journal of the Australian Society of Medical Imaging and Radiation Therapy (ASMIRT) and the New Zealand Institute of Medical Radiation Technology (NZIMRT).
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