Preoperative discrimination of invasive and non-invasive breast cancer using machine learning based on automated breast volume scanning (ABVS) radiomics and virtual touch quantification (VTQ)

被引:0
|
作者
Fan, Lifang [1 ,2 ]
Wu, Yimin [3 ]
Wu, Shujian [4 ]
Zhang, Chaoxue [1 ]
Zhu, Xiangming [4 ]
机构
[1] Anhui Med Univ, Affiliated Hosp 1, 218 Jixi Rd, Hefei, Anhui, Peoples R China
[2] Wannan Med Coll, Sch Med Imageol, Wuhu, Anhui, Peoples R China
[3] East China Normal Univ, Wuhu Hosp, Peoples Hosp 2, Dept Ultrasound, Wuhu, Anhui, Peoples R China
[4] Yijishan Hosp, Wannan Med Coll, 2 Western Zheshan Rd, Wuhu 241001, Anhui, Peoples R China
关键词
Machine learning; Automated breast volume scanning; Radiomics; Virtual touch quantification; Breast cancer; RADIATION FORCE IMPULSE; ELASTOGRAPHY; ULTRASOUND; PREDICTION; DIAGNOSIS;
D O I
10.1007/s12672-024-01438-7
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
PurposeEvaluating the efficacy of machine learning for preoperative differentiation between invasive and non-invasive breast cancer through integrated automated breast volume scanning (ABVS) radiomics and virtual touch quantification (VTQ) techniques.MethodsWe conducted an extensive retrospective analysis on a cohort of 171 breast cancer patients, differentiating them into 124 invasive and 47 non-invasive cases. The data was meticulously divided into a training set (n = 119) and a validation set (n = 52), maintaining a 70:30 ratio. Several machine learning models were developed and tested, including Logistic Regression (LR), Random Forest (RF), Decision Tree (DT), and Support Vector Machine (SVM). Their performance was evaluated using the Area Under the Receiver Operating Characteristic (ROC) Curve (AUC), and visualized the feature contributions of the optimal model using Shapley Additive Explanations (SHAP).ResultsThrough both univariate and multivariate logistic regression analyses, we identified key independent predictors in differentiating between invasive and non-invasive breast cancer types: coronal plane features, Shear Wave Velocity (SWV), and Radscore. The AUC scores for our machine learning models varied, ranging from 0.625 to 0.880, with the DT model demonstrating a notably high AUC of 0.874 in the validation set.ConclusionOur findings indicate that machine learning models, which integrate ABVS radiomics and VTQ, are significantly effective in preoperatively distinguishing between invasive and non-invasive breast cancer. Particularly, the DT model stood out in the validation set, establishing it as the primary model in our study. This highlights its potential utility in enhancing clinical decision-making processes.
引用
收藏
页数:12
相关论文
共 50 条
  • [41] Non-invasive diagnosis model for pancreatic cystic tumors based on machine learning-radiomics using contrast-enhanced CT
    Yang, F.
    Yang, P.
    Yang, M.
    Zhuo, J.
    Wang, J.
    Lu, D.
    Zheng, S.
    Niu, T.
    Xu, X.
    TRANSPLANTATION, 2019, 103 (08) : 344 - 344
  • [42] Preoperative Non-Invasive Prediction of Breast Cancer Molecular Subtypes With a Deep Convolutional Neural Network on Ultrasound Images
    Li, Chunxiao
    Huang, Haibo
    Chen, Ying
    Shao, Sihui
    Chen, Jing
    Wu, Rong
    Zhang, Qi
    FRONTIERS IN ONCOLOGY, 2022, 12
  • [43] Machine Learning and Radiomics Applications in Esophageal Cancers Using Non-Invasive Imaging Methods-A Critical Review of Literature
    Xie, Chen-Yi
    Pang, Chun-Lap
    Chan, Benjamin
    Wong, Emily Yuen-Yuen
    Dou, Qi
    Vardhanabhuti, Varut
    CANCERS, 2021, 13 (10)
  • [44] Non-Invasive Prediction of Survival Time of Midline Glioma Patients Using Machine Learning on Multiparametric MRI Radiomics Features
    Deng, Da-Biao
    Liao, Yu-Ting
    Zhou, Jiang-Fen
    Cheng, Li-Na
    He, Peng
    Wu, Sheng-Nan
    Wang, Wen-Sheng
    Zhou, Quan
    FRONTIERS IN NEUROLOGY, 2022, 13
  • [45] Non-invasive tumor microenvironment evaluation and treatment response prediction in gastric cancer using deep learning radiomics
    Jiang, Yuming
    Zhou, Kangneng
    Sun, Zepang
    Wang, Hongyu
    Xie, Jingjing
    Zhang, Taojun
    Sang, Shengtian
    Islam, Md Tauhidul
    Wang, Jen-Yeu
    Chen, Chuanli
    Yuan, Qingyu
    Xi, Sujuan
    Li, Tuanjie
    Xu, Yikai
    Xiong, Wenjun
    Wang, Wei
    Li, Guoxin
    Li, Ruijiang
    CELL REPORTS MEDICINE, 2023, 4 (08)
  • [46] Non-invasive evaluation of breast cancer response to chemotherapy using quantitative ultrasonic backscatter parameters
    Sannachi, Lakshmanan
    Tadayyon, Hadi
    Sadeghi-Naini, Ali
    Tran, William
    Gandhi, Sonal
    Wright, Frances
    Oelze, Michael
    Czarnota, Gregory
    MEDICAL IMAGE ANALYSIS, 2015, 20 (01) : 224 - 236
  • [47] UWB Based Low-Cost and Non-Invasive Practical Breast Cancer Early Detection
    Vijayasarveswari, V.
    Khatun, S.
    Fakir, M. M.
    Jusoh, M.
    Ali, S.
    11TH ASIAN CONFERENCE ON CHEMICAL SENSORS (ACCS2015), 2017, 1808
  • [48] Machine learning: A non-invasive prediction method for gastric cancer based on a survey of lifestyle behaviors
    Jiang, Siqing
    Gao, Haojun
    He, Jiajin
    Shi, Jiaqi
    Tong, Yuling
    Wu, Jian
    FRONTIERS IN ARTIFICIAL INTELLIGENCE, 2022, 5
  • [49] Blood-based DNA methylation as epigenetic biomarkers for non-invasive detection of breast cancer
    Roy, D.
    Zheng, L.
    Liu, D.
    Li, G.
    Li, M.
    Zhang, K.
    Van Etten, R. A.
    CANCER RESEARCH, 2019, 79 (04)
  • [50] Non-invasive screening for breast cancer risk based on circulating ensembles of tumor associated cells
    Akolkar, Dadasaheb
    Patil, Darshana
    Fulmali, Pradip
    Fulmali, Pooja
    Patil, Revati
    Adhav, Archana
    Patel, Shoeb
    Apurwa, Sachin
    Pawar, Sushant
    Bodke, Harshal
    Ranjan, Vishal
    Chougule, Rohit
    Shejwalkar, Pradyumna
    Khan, Shabista
    Dhasarathan, Raja
    Devhare, Pradip
    Patil, Sanket
    Datta, Vineet
    Sims, Cynthe
    Schuster, Stefan
    Bhatia, Jatinder
    Bose, Chirantan
    Srinivasan, Ajay
    Datar, Rajan
    CANCER RESEARCH, 2021, 81 (04)