Menghao ZhangMinghao XueShuying LiYun ZouQuing Zhu
Diffuse optical tomography (DOT) is a promising technique that provides functional information related to tumor angiogenesis. However, reconstructing the DOT function map of a breast lesion is an ill-posed and underdetermined inverse process. A co-registered ultrasound (US) system that provides structural information about the breast lesion can improve the localization and accuracy of DOT reconstruction. Additionally, the well-known US characteristics of benign and malignant breast lesions can further improve cancer diagnosis based on DOT alone. Inspired by a fusion model deep learning approach, we combined US features extracted by a modified VGG-11 network with images reconstructed from a DOT deep learning auto-encoder-based model to form a new neural network for breast cancer diagnosis. The combined neural network model was trained with simulation data and fine-tuned with clinical data: it achieved an AUC of 0.931 (95% CI: 0.919-0.943), superior to those achieved using US images alone (0.860) or DOT images alone (0.842).
Menghao ZhangShuying LiMinghao XueQuing Zhu
Jaejun YooSohail SabirDuchang HeoKee Hyun KimAbdul WahabYoonseok ChoiSeul-I LeeEun Young ChaeHak Hee KimYoung Min BaeYoung-Wook ChoiSeungryong ChoJong Chul Ye
K. M. Shihab UddinMenghao ZhangFrank J. BrooksMark A. AnastasioQuing Zhu
Ganesh M. BalasubramaniamGokul ManavalanAssaf S. KadoshShlomi Arnon