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基于深度学习的眶下后筛窦细胞人工智能辅助诊断的建立

Establishment of AI-assisted diagnosis of the infraorbital posterior ethmoid cells based on deep learning.

作者信息

Ni Ting, Qian Xusheng, Zeng Qiang, Ma Yingying, Xie Ziran, Dai Yakang, Che Zigang

机构信息

Department of Radiology, Nanjing Tongren Hospital, School of Medicine, Southeast University, No. 2007, Ji Yin Avenue, Jiang Ning District, Nanjing, 211102, PR China.

Suzhou Institute of Biomedical Engineering and Technology, Chinese Academy of Sciences, Suzhou, 215163, PR China.

出版信息

BMC Med Imaging. 2025 Jul 21;25(1):292. doi: 10.1186/s12880-025-01831-w.

Abstract

OBJECTIVE

To construct an artificial intelligence (AI)-assisted model for identifying the infraorbital posterior ethmoid cells (IPECs) based on deep learning using sagittal CT images.

METHODS

Sagittal CT images of 277 samples with and 142 samples without IPECs were retrospectively collected. An experienced radiologist engaged in the relevant aspects picked a sagittal CT image that best showed IPECs. The images were randomly assigned to the training and test sets, with 541 sides in the training set and 97 sides in the test set. The training set was used to perform a five-fold cross-validation, and the results of each fold were used to predict the test set. The model was built using nnUNet, and its performance was evaluated using Dice and standard classification metrics.

RESULTS

The model achieved a Dice coefficient of 0.900 in the training set and 0.891 in the additional set. Precision was 0.965 for the training set and 1.000 for the additional set, while sensitivity was 0.981 and 0.967, respectively. A comparison of the diagnostic efficacy between manual outlining by a less-experienced radiologist and AI-assisted outlining showed a significant improvement in detection efficiency (P < 0.05). The AI model aided correctly in identifying and outlining all IPECs, including 12 sides that the radiologist should improve portraying.

CONCLUSION

AI models can help radiologists identify the IPECs, which can further prompt relevant clinical interventions.

摘要

目的

构建一种基于深度学习的人工智能(AI)辅助模型,用于利用矢状位CT图像识别眶下后筛窦(IPECs)。

方法

回顾性收集277例有IPECs的样本和142例无IPECs的样本的矢状位CT图像。一位从事相关领域的经验丰富的放射科医生挑选出一张最能显示IPECs的矢状位CT图像。将图像随机分配到训练集和测试集,训练集有541个样本,测试集有97个样本。训练集用于进行五折交叉验证,每次折叠的结果用于预测测试集。使用nnUNet构建模型,并使用Dice和标准分类指标评估其性能。

结果

该模型在训练集中的Dice系数为0.900,在附加集中为0.891。训练集的精度为0.965,附加集为1.000,而敏感性分别为0.981和0.967。经验较少的放射科医生手动勾勒与AI辅助勾勒之间的诊断效能比较显示,检测效率有显著提高(P < 0.05)。AI模型有助于正确识别和勾勒所有IPECs,包括放射科医生应改进描绘的12个样本。

结论

AI模型可以帮助放射科医生识别IPECs,这可以进一步促使进行相关的临床干预。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/78d1/12281971/07efa10e7345/12880_2025_1831_Fig1_HTML.jpg

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