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. Author manuscript; available in PMC: 2020 Oct 1.
Published in final edited form as: J Magn Reson Imaging. 2019 Jul 5;52(4):998–1018. doi: 10.1002/jmri.26852

TABLE 3.

Review of Machine-Learning Studies Predicting Response to Neoadjuvant Chemotherapy

Study Patients (N, subgroups) MR sequences Features Machine-learning classifier Results
Braman (2017) 117 HR+, TN, HER2+ DCE, pretherapy Intratumoral and peritumoral texture LDA, DLDA,* quadratic discriminant analysis, naive Bayes,* SVM AUC 0.78 all patients; AUC 0.93 for TN/HER2+
Cain (2019) 288 HR+, TN/HER2+ 1st postcontrast subtraction, pretherapy Fibroglandular tissue (nontumor) and tumor volume, enhancement, texture Logistic regression,* SVM
AUC 0.707 in TN/HER2+ Tahmassebi (2019) 38 T2, DCE, DWI, pretherapy BIRADS descriptors,
pharmacokinetic, ADC values SVM, LDA, logistic regression, random forests, stochastic gradient descent, decision tree, adaptive boosting, XGBoost* AUC 0.86 for RCB class
Machireddy (2019) 55 DCE, pretherapy and after 1st cycle Texture, multiresolution fractal analysis SVM
AUC 0.91 Banerjee (2018) 53, TN DCE, pre and posttherapy Intensity, texture, shape, Riesz wavelets Lasso, SVM AUC 0.83
Johansen (2007) 24 DCE, pre and after 1st cycle of therapy Pre and posttreatment change in signal intensity Probabilistic neural network and Kohonen neural network
Significant difference between pCR and non-pCR groups
Aghaei (2015) 68 DCE, pretherapy Kinetics of necrotic and enhancing tumor, background parenchyma ANN AUC 0.96
Giannini (2017) 44 1st postcontrast subtraction, pretherapy Texture Bayesian 70% accuracy
Wu (2016) 35 DCE, before and after first cycle of chemo Texture within tumor subregions LASSO and logistic regression AUC 0.79
Liu (2019) 414, HR+, TN, HER2+ T2, DWI, postcontrast, pretherapy Morphology, texture, wavelet SVM AUC 0.79
Braman (2019) 209, HR+, TN, HER2+ DCE, pretherapy Intratumoral and peritumoral texture DLDA AUC 0.89
Aghaei (2016) 151 DCE, pretherapy Global kinetic (both breasts) ANN AUC 0.83
Fan (2017) 57 DCE, pretherapy Morphology, dynamic, texture Wrapper Subset Evaluator AUC 0.874
Ha (2018) 141, HR+, triple positive, TN, HER2+ First postcontrast T1, pretherapy (unsupervised learning) CNN 88% accuracy
Ravichandran (2018) 168, HER2 status Pre and postcontrast, pretherapy (unsupervised learning) CNN AUC 0.85

HR = hormone receptor; LDA = linear discriminant analysis; DLDA = diagonal linear discriminant analysis; SVM = support vector machine; CNN = convolutional neural network; TN = triple negative.

*

Better-performing classifier.