Convolutional Neural Networks Accurately Predict Benign versus Malignant Status Among Peripheral Nerve Sheath Tumors

A. Mazal, Liyuan Chen, F. Poh, Jing Wang, M. Folkert, O. Ashikyan, P. Pezeshk, A. Chhabra
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Abstract

Background: Peripheral nerve sheath tumors (PNSTs) comprise ~5-10% of soft tissue tumors encountered in the clinical setting. Benign lesions (BPNSTs), such as neurofibromas and schwannomas are often asymptomatic or cause neuropathy. Malignant peripheral nerve sheath tumors (MPNSTs) frequently exhibit rapid invasive behavior and metastatic spread. MR imaging markers do not reliably differentiate BPNSTs from MPNSTs. Convolutional neural networks employ machine learning and multi-order statistics to derive imaging signatures that could improve diagnostic assessment of PNSTs.
卷积神经网络能准确预测周围神经鞘肿瘤的良恶性
背景:周围神经鞘肿瘤(PNSTs)占临床遇到的软组织肿瘤的5-10%。良性病变(bpnst),如神经纤维瘤和神经鞘瘤通常无症状或引起神经病变。恶性周围神经鞘肿瘤(MPNSTs)经常表现出快速的侵袭行为和转移扩散。MR成像标记不能可靠地区分bpnst和mpnst。卷积神经网络采用机器学习和多阶统计来获得可以改善pnst诊断评估的成像特征。
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