Department of Radiology, The Affiliated Huaian Clinical College of Xuzhou Medical University, Huaian, Jiangsu, China.
Department of Radiology, The First Affiliated Hospital, Sun Yat-Sen University, 58th, The Second Zhongshan Road, Guangzhou, Guangdong, China.
Eur Radiol. 2024 Sep;34(9):6121-6131. doi: 10.1007/s00330-024-10638-2. Epub 2024 Feb 10.
We aimed to develop a multi-modality model to predict axillary lymph node (ALN) metastasis by combining clinical predictors with radiomic features from magnetic resonance imaging (MRI) and mammography (MMG) in breast cancer. This model might potentially eliminate unnecessary axillary surgery in cases without ALN metastasis, thereby minimizing surgery-related complications.
We retrospectively enrolled 485 breast cancer patients from two hospitals and extracted radiomics features from tumor and lymph node regions on MRI and MMG images. After feature selection, three random forest models were built using the retained features, respectively. Significant clinical factors were integrated with these radiomics models to construct a multi-modality model. The multi-modality model was compared to radiologists' diagnoses on axillary ultrasound and MRI. It was also used to assist radiologists in making a secondary diagnosis on MRI.
The multi-modality model showed superior performance with AUCs of 0.964 in the training cohort, 0.916 in the internal validation cohort, and 0.892 in the external validation cohort. It surpassed single-modality models and radiologists' ALN diagnosis on MRI and axillary ultrasound in all validation cohorts. Additionally, the multi-modality model improved radiologists' MRI-based ALN diagnostic ability, increasing the average accuracy from 70.70 to 78.16% for radiologist A and from 75.42 to 81.38% for radiologist B.
The multi-modality model can predict ALN metastasis of breast cancer accurately. Moreover, the artificial intelligence (AI) model also assisted the radiologists to improve their diagnostic ability on MRI.
The multi-modality model based on both MRI and mammography images allows preoperative prediction of axillary lymph node metastasis in breast cancer patients. With the assistance of the model, the diagnostic efficacy of radiologists can be further improved.
• We developed a novel multi-modality model that combines MRI and mammography radiomics with clinical factors to accurately predict axillary lymph node (ALN) metastasis, which has not been previously reported. • Our multi-modality model outperformed both the radiologists' ALN diagnosis based on MRI and axillary ultrasound, as well as single-modality radiomics models based on MRI or mammography. • The multi-modality model can serve as a potential decision support tool to improve the radiologists' ALN diagnosis on MRI.
我们旨在通过结合磁共振成像(MRI)和乳房 X 线照相术(MMG)的临床预测因子和放射组学特征,开发一种多模态模型来预测乳腺癌的腋窝淋巴结(ALN)转移。该模型可能有助于在没有 ALN 转移的情况下消除不必要的腋窝手术,从而最大程度地减少手术相关并发症。
我们从两家医院回顾性招募了 485 名乳腺癌患者,并从 MRI 和 MMG 图像的肿瘤和淋巴结区域提取放射组学特征。在特征选择后,使用保留的特征分别构建了三个随机森林模型。将显著的临床因素与这些放射组学模型相结合,构建了一个多模态模型。该多模态模型与腋窝超声和 MRI 上的放射科医生诊断进行了比较。它还用于协助放射科医生对 MRI 进行二次诊断。
多模态模型在训练队列中的 AUC 为 0.964,内部验证队列中的 AUC 为 0.916,外部验证队列中的 AUC 为 0.892,表现出优异的性能。在所有验证队列中,它均优于单模态模型和放射科医生在 MRI 和腋窝超声上的 ALN 诊断。此外,多模态模型提高了放射科医生基于 MRI 的 ALN 诊断能力,使放射科医生 A 的平均准确率从 70.70%提高到 78.16%,放射科医生 B 的平均准确率从 75.42%提高到 81.38%。
多模态模型可以准确预测乳腺癌的 ALN 转移。此外,人工智能(AI)模型还可以协助放射科医生提高他们在 MRI 上的诊断能力。
该多模态模型基于 MRI 和乳房 X 线照相术图像,可在术前预测乳腺癌患者的腋窝淋巴结转移。通过模型的辅助,可进一步提高放射科医生的诊断效果。
我们开发了一种新的多模态模型,该模型结合了 MRI 和乳房 X 线照相术的放射组学与临床因素,可准确预测腋窝淋巴结(ALN)转移,这是以前未曾报道过的。
我们的多模态模型优于放射科医生基于 MRI 和腋窝超声的 ALN 诊断,以及基于 MRI 或乳房 X 线照相术的单模态放射组学模型。
多模态模型可以作为一种潜在的决策支持工具,以改善放射科医生在 MRI 上的 ALN 诊断。