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      Deep Learning for Prediction of Progression and Recurrence in Nonfunctioning Pituitary Macroadenomas: Combination of Clinical and MRI Features

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          Abstract

          Objectives

          A subset of non-functioning pituitary macroadenomas (NFMAs) may exhibit early progression/recurrence (P/R) after tumor resection. The purpose of this study was to apply deep learning (DL) algorithms for prediction of P/R in NFMAs.

          Methods

          From June 2009 to December 2019, 78 patients diagnosed with pathologically confirmed NFMAs, and who had undergone complete preoperative MRI and postoperative MRI follow-up for more than one year, were included. DL classifiers including multi-layer perceptron (MLP) and convolutional neural network (CNN) were used to build predictive models. Categorical and continuous clinical data were fed into the MLP model, and images of preoperative MRI (T2WI and contrast enhanced T1WI) were analyzed by the CNN model. MLP, CNN and multimodal CNN-MLP architectures were performed to predict P/R in NFMAs.

          Results

          Forty-two (42/78, 53.8%) patients exhibited P/R after surgery. The median follow-up time was 42 months, and the median time to P/R was 25 months. As compared with CNN using MRI (accuracy 83%, precision 87%, and AUC 0.84) or MLP using clinical data (accuracy 73%, precision 73%, and AUC 0.73) alone, the multimodal CNN-MLP model using both clinical and MRI features showed the best performance for prediction of P/R in NFMAs, with accuracy 83%, precision 90%, and AUC 0.85.

          Conclusions

          DL architecture incorporating clinical and MRI features performs well to predict P/R in NFMAs. Pending more studies to support the findings, the results of this study may provide valuable information for NFMAs treatment planning.

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          Most cited references51

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          Gradient-based learning applied to document recognition

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            Going deeper with convolutions

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              Dermatologist-level classification of skin cancer with deep neural networks

              Skin cancer, the most common human malignancy, is primarily diagnosed visually, beginning with an initial clinical screening and followed potentially by dermoscopic analysis, a biopsy and histopathological examination. Automated classification of skin lesions using images is a challenging task owing to the fine-grained variability in the appearance of skin lesions. Deep convolutional neural networks (CNNs) show potential for general and highly variable tasks across many fine-grained object categories. Here we demonstrate classification of skin lesions using a single CNN, trained end-to-end from images directly, using only pixels and disease labels as inputs. We train a CNN using a dataset of 129,450 clinical images—two orders of magnitude larger than previous datasets—consisting of 2,032 different diseases. We test its performance against 21 board-certified dermatologists on biopsy-proven clinical images with two critical binary classification use cases: keratinocyte carcinomas versus benign seborrheic keratoses; and malignant melanomas versus benign nevi. The first case represents the identification of the most common cancers, the second represents the identification of the deadliest skin cancer. The CNN achieves performance on par with all tested experts across both tasks, demonstrating an artificial intelligence capable of classifying skin cancer with a level of competence comparable to dermatologists. Outfitted with deep neural networks, mobile devices can potentially extend the reach of dermatologists outside of the clinic. It is projected that 6.3 billion smartphone subscriptions will exist by the year 2021 (ref. 13) and can therefore potentially provide low-cost universal access to vital diagnostic care.
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                Author and article information

                Contributors
                Journal
                Front Oncol
                Front Oncol
                Front. Oncol.
                Frontiers in Oncology
                Frontiers Media S.A.
                2234-943X
                20 April 2022
                2022
                : 12
                : 813806
                Affiliations
                [1] 1 Department of Electrical Engineering, National Cheng Kung University , Tainan, Taiwan
                [2] 2 Graduate Institute of Electronics Engineering, National Taiwan University , Taipei, Taiwan
                [3] 3 Department of Anesthesiology, Chi Mei Medical Center , Tainan, Taiwan
                [4] 4 Department of Hospital and Health Care Administration, College of Recreation and Health Management, Chia Nan University of Pharmacy and Science , Tainan, Taiwan
                [5] 5 Department of Medical Imaging, Chi-Mei Medical Center , Tainan, Taiwan
                [6] 6 Department of Neurosurgery, Chi Mei Medical Center , Tainan, Taiwan
                [7] 7 Department of Nursing, Min-Hwei College of Health Care Management , Tainan, Taiwan
                [8] 8 Department of Medical Imaging, Kaohsiung Medical University Hospital , Kaohsiung, Taiwan
                [9] 9 Department of Radiological Sciences, University of California, Irvine , Irvine, CA, United States
                [10] 10 Department of Radiology, E-DA Hospital, I-Shou University , Kaohsiung, Taiwan
                [11] 11 Department of Health and Nutrition, Chia Nan University of Pharmacy and Science , Tainan, Taiwan
                [12] 12 Institute of Biomedical Sciences, National Sun Yat-Sen University , Kaohsiung, Taiwan
                Author notes

                Edited by: Khan Iftekharuddin, Old Dominion University, United States

                Reviewed by: Cesare Furlanello, Bruno Kessler Foundation (FBK), Italy; Guolin Ma, China-Japan Friendship Hospital, China

                *Correspondence: Ching-Chung Ko, kocc0729@ 123456gmail.com

                †These authors have contributed equally to this work

                This article was submitted to Neuro-Oncology and Neurosurgical Oncology, a section of the journal Frontiers in Oncology

                Article
                10.3389/fonc.2022.813806
                9065347
                35515108
                90b6e62d-9482-40f2-861f-fdc658c8d7b7
                Copyright © 2022 Chen, Hsieh, Hung, Shih, Lim, Kuo, Chen and Ko

                This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

                History
                : 12 November 2021
                : 22 March 2022
                Page count
                Figures: 6, Tables: 3, Equations: 1, References: 51, Pages: 12, Words: 5187
                Funding
                Funded by: Ministry of Science and Technology, Taiwan , doi 10.13039/501100004663;
                Categories
                Oncology
                Original Research

                Oncology & Radiotherapy
                deep learning,pituitary,macroadenoma,progression,recurrence,mri,mlp,cnn
                Oncology & Radiotherapy
                deep learning, pituitary, macroadenoma, progression, recurrence, mri, mlp, cnn

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