Giannini Valentina, Mazzetti Simone, Marmo Agnese, Montemurro Filippo, Regge Daniele, Martincich Laura
1 Department of Surgical Sciences, University of Torino , Turin , Italy.
2 Department of Radiology, Candiolo Cancer Institute , Torino , Italy.
Br J Radiol. 2017 Aug;90(1077):20170269. doi: 10.1259/bjr.20170269. Epub 2017 Jul 14.
To assess whether a computer-aided, diagnosis (CAD) system can predict pathological Complete Response (pCR) to neoadjuvant chemotherapy (NAC) prior to treatment using texture features.
Response to treatment of 44 patients was defined according to the histopatology of resected tumour and extracted axillary nodes in two ways: (a) pCR+ (Smith's Grade = 5) vs pCR- (Smith's Grade < 5); (b) pCRN+ (pCR+ and absence of residual lymph node metastases) vs pCRN - . A CAD system was developed to: (i) segment the breasts; (ii) register the DCE-MRI sequence; (iii) detect the lesion and (iv) extract 27 3D texture features. The role of individual texture features, multiparametric models and Bayesian classifiers in predicting patients' response to NAC were evaluated.
A cross-validated Bayesian classifier fed with 6 features was able to predict pCR with a specificity of 72% and a sensitivity of 67%. Conversely, 2 features were used by the Bayesian classifier to predict pCRN, obtaining a sensitivity of 69% and a specificity of 61%.
A CAD scheme, that extracts texture features from an automatically segmented 3D mask of the tumour, could predict pathological response to NAC. Additional research should be performed to validate these promising results on a larger cohort of patients and using different classification strategies. Advances in knowledge: This is the first study assessing the role of an automatic CAD system in predicting the pathological response to NAC before treatment. Fully automatic methods represent the backbone of standardized analysis and may help in timely managing patients candidate to NAC.
评估计算机辅助诊断(CAD)系统能否在治疗前使用纹理特征预测新辅助化疗(NAC)后的病理完全缓解(pCR)。
根据切除肿瘤的组织病理学和提取的腋窝淋巴结,以两种方式定义44例患者的治疗反应:(a)pCR+(史密斯分级=5)与pCR-(史密斯分级<5);(b)pCRN+(pCR+且无残留淋巴结转移)与pCRN-。开发了一个CAD系统,用于:(i)分割乳房;(ii)配准DCE-MRI序列;(iii)检测病变;(iv)提取27个三维纹理特征。评估了个体纹理特征、多参数模型和贝叶斯分类器在预测患者对NAC反应中的作用。
采用6个特征的交叉验证贝叶斯分类器能够预测pCR,特异性为72%,敏感性为67%。相反,贝叶斯分类器使用2个特征来预测pCRN,敏感性为69%,特异性为61%。
一种从肿瘤自动分割的三维掩码中提取纹理特征的CAD方案可以预测对NAC的病理反应。应进行更多研究,以在更大的患者队列中并使用不同的分类策略验证这些有前景的结果。知识进展:这是第一项评估自动CAD系统在治疗前预测对NAC病理反应作用的研究。全自动方法是标准化分析的核心,可能有助于及时管理适合NAC的患者。