Synthesizing time-series wound prognosis factors from electronic medical records using generative adversarial networks
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Zeyun Yu | D. M. Anisuzzaman | Jeffrey Niezgoda | Sandeep Gopalakrishnan | Farnaz H. Foomani | Jonathan Niezgoda | William Guns | Zeyun Yu | D. Anisuzzaman | J. Niezgoda | Sandeep Gopalakrishnan | William M. Guns | Jonathan Niezgoda
[1] Yanqing Zhang,et al. GAN-based synthetic brain PET image generation , 2020, Brain Informatics.
[2] D. Miklavčič,et al. Prognostic factors in the prediction of chronic wound healing by electrical stimulation , 2001, Medical and Biological Engineering and Computing.
[3] Y. Bello,et al. Factors that Influence Healing in Chronic Venous Ulcers Treated with Cryopreserved Human Epidermal Cultures , 2002, Dermatologic surgery : official publication for American Society for Dermatologic Surgery [et al.].
[4] V. Falanga,et al. Prognostic indicators in venous ulcers. , 2000, Journal of the American Academy of Dermatology.
[5] M. Sheridan,et al. Development of a Model to Predict Healing of Chronic Wounds Within 12 Weeks , 2020, Advances in wound care.
[6] Jianhua Lin,et al. Divergence measures based on the Shannon entropy , 1991, IEEE Trans. Inf. Theory.
[7] Xiaohui Liang,et al. A hybrid neural network model for predicting kidney disease in hypertension patients based on electronic health records , 2019, BMC Medical Informatics and Decision Making.
[8] R. Ceilley,et al. Chronic Wound Healing: A Review of Current Management and Treatments , 2017, Advances in Therapy.
[9] Jesse A Berlin,et al. Diabetic neuropathic foot ulcers: predicting which ones will not heal. , 2003, The American journal of medicine.
[10] Svetha Venkatesh,et al. $\mathtt {Deepr}$: A Convolutional Net for Medical Records , 2016, IEEE Journal of Biomedical and Health Informatics.
[11] D. Margolis,et al. Risk factors for delayed healing of neuropathic diabetic foot ulcers: a pooled analysis. , 2000, Archives of dermatology.
[12] Chao-Lin Liu,et al. Synthesizing electronic health records using improved generative adversarial networks , 2018, J. Am. Medical Informatics Assoc..
[13] Munish Kumar,et al. A healthcare monitoring system using random forest and internet of things (IoT) , 2019, Multimedia Tools and Applications.
[14] Saeed Safari,et al. Evidence Based Emergency Medicine; Part 5 Receiver Operating Curve and Area under the Curve , 2016, Emergency.
[15] Abdul R Siddiqui,et al. Chronic wound infection: facts and controversies. , 2010, Clinics in dermatology.
[16] Ricard Gavaldà,et al. Generating Synthetic but Plausible Healthcare Record Datasets , 2018, ArXiv.
[17] You Jin Kim,et al. Highrisk Prediction from Electronic Medical Records via Deep Attention Networks , 2017, ArXiv.
[18] D. Margolis,et al. Risk factors associated with the failure of a venous leg ulcer to heal. , 1999, Archives of dermatology.
[19] Anthony N. Nguyen,et al. Identifying Risk Factors For Heart Disease in Electronic Medical Records: A Deep Learning Approach , 2018, BioNLP.
[20] Chia-Wei Liang,et al. Assessment of Deep Learning Using Nonimaging Information and Sequential Medical Records to Develop a Prediction Model for Nonmelanoma Skin Cancer. , 2019, JAMA dermatology.
[21] K. Hajian‐Tilaki,et al. Receiver Operating Characteristic (ROC) Curve Analysis for Medical Diagnostic Test Evaluation. , 2013, Caspian journal of internal medicine.
[22] Leo Breiman,et al. Random Forests , 2001, Machine Learning.
[23] A. Charlett,et al. Venous leg ulcers: a prognostic index to predict time to healing. , 1992, BMJ.
[24] Chi-Chun Lee,et al. Comparing deep neural network and other machine learning algorithms for stroke prediction in a large-scale population-based electronic medical claims database , 2017, 2017 39th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).
[25] Omid Dehzangi,et al. Efficient Oct Image Segmentation Using Neural Architecture Search , 2020, 2020 IEEE International Conference on Image Processing (ICIP).
[26] Jeffrey L. Gunter,et al. Medical Image Synthesis for Data Augmentation and Anonymization using Generative Adversarial Networks , 2018, SASHIMI@MICCAI.
[27] D. Margolis,et al. The accuracy of venous leg ulcer prognostic models in a wound care system , 2004, Wound repair and regeneration : official publication of the Wound Healing Society [and] the European Tissue Repair Society.
[28] Miki Haseyama,et al. Synthetic Gastritis Image Generation via Loss Function-Based Conditional PGGAN , 2019, IEEE Access.
[29] Hayit Greenspan,et al. GAN-based Synthetic Medical Image Augmentation for increased CNN Performance in Liver Lesion Classification , 2018, Neurocomputing.
[30] Mihaela van der Schaar,et al. Time-series Generative Adversarial Networks , 2019, NeurIPS.
[31] Mohammad Sohel Rahman,et al. A Random Forest based predictor for medical data classification using feature ranking , 2019, Informatics in Medicine Unlocked.
[32] Mohammad Khalilia,et al. Predicting disease risks from highly imbalanced data using random forest , 2011, BMC Medical Informatics Decis. Mak..
[33] F. Massey. The Kolmogorov-Smirnov Test for Goodness of Fit , 1951 .
[34] Jimeng Sun,et al. Generating Multi-label Discrete Patient Records using Generative Adversarial Networks , 2017, MLHC.
[35] Xiangji Huang,et al. Deep learning for healthcare decision making with EMRs , 2014, 2014 IEEE International Conference on Bioinformatics and Biomedicine (BIBM).
[36] D. Margolis,et al. Evaluation of the use of prognostic information for the care of individuals with venous leg ulcers or diabetic neuropathic foot ulcers , 2009, Wound repair and regeneration : official publication of the Wound Healing Society [and] the European Tissue Repair Society.
[37] R. Kirsner,et al. Rapid identification of slow healing wounds , 2016, Wound repair and regeneration : official publication of the Wound Healing Society [and] the European Tissue Repair Society.
[38] Stefan Woerner,et al. Quantum Generative Adversarial Networks for learning and loading random distributions , 2019, npj Quantum Information.
[39] D. Petrović,et al. Prognostic factors related to delayed healing of venous leg ulcer treated with compression therapy , 2015 .
[40] Léon Bottou,et al. Wasserstein Generative Adversarial Networks , 2017, ICML.
[41] C. McCollum,et al. Factors associated with healing leg ulceration with high compression. , 1995, Age and ageing.
[42] Simon Osindero,et al. Conditional Generative Adversarial Nets , 2014, ArXiv.
[43] Anna Saranti,et al. Towards multi-modal causability with Graph Neural Networks enabling information fusion for explainable AI , 2021, Inf. Fusion.
[44] J. Shavlik,et al. Breast cancer risk estimation with artificial neural networks revisited , 2010, Cancer.
[45] Aaron C. Courville,et al. Improved Training of Wasserstein GANs , 2017, NIPS.
[46] Gunnar Rätsch,et al. Real-valued (Medical) Time Series Generation with Recurrent Conditional GANs , 2017, ArXiv.
[47] Chao Yan,et al. Ensuring electronic medical record simulation through better training, modeling, and evaluation , 2019, J. Am. Medical Informatics Assoc..
[48] A. Ellis. Breast , 2002, BMJ : British Medical Journal.