1.**Machine learning-based phenogrouping in heart failure to identify responders to cardiac resynchronization therapy,** European Journal of Heart Failure (2018) [*[read]*](https://github.com/vonpower/Healthcare/blob/main/Applications/Machine%20Learning/2018-Machine%20learning-based%20phenogrouping%20in%20heart%20failure%20to%20identify%20responders%20to%20cardiac%20resynchronization%20therapy.pdf)
*Maja Cikes1, Sergio Sanchez-Martinez, Brian Claggett, Nicolas Duchateau, Gemma Piella, Constantine Butakoff, Anne Catherine Pouleur, Dorit Knappe, Tor Biering-Sørensen, Valentina Kutyifa, Arthur Moss, Kenneth Stein, Scott D. Solomon, and Bart Bijnens*
1.**Cardiologist-level arrhythmia detection and classification in ambulatory electrocardiograms using a deep neural network,** Nature Medicine 25, 65–69(2019) [*[read]*](https://github.com/vonpower/Healthcare/blob/main/Applications/Machine%20Learning/2019-Cardiologist-level%20arrhythmia%20detection%20and%20classification%20in%20ambulatory%20electrocardiograms%20using%20a%20deep%20neural%20network.pdf)
1.**Performance and Reading Time of Automated Breast US with or without Computer-aided,** Radiology 292:540–549(2019) [*[read]*](https://github.com/vonpower/Healthcare/blob/main/Applications/Machine%20Learning/2019-Performance%20and%20Reading%20Time%20of%20Automated%20Breast%20US%20with%20or%20without%20Computer-aided.pdf)
1.**Impact of Data Presentation on Physician Performance Utilizing ArtificialIntelligence-Based Computer-Aided Diagnosis and DecisionSupport Systems,** Journal of Digital Imaging 32:408–416 (2019) [*[read]*](https://github.com/vonpower/Healthcare/blob/main/Applications/Machine%20Learning/Impact%20of%20Data%20Presentation%20on%20Physician%20Performance%20Utilizing%20ArtificialIntelligence-Based%20Computer-Aided%20Diagnosis%20and%20DecisionSupport%20Systems.pdf)
1.**Management of Thyroid Nodules Seen on US Images:Deep Learning May Match Performance of Radiologists,** Radiology 292:695–701(2019) [*[read]*](https://doi.org/10.1148/radiol.2019181343)
*Mateusz Buda, MSc • Benjamin Wildman-Tobriner, MD • Jenny K. Hoang, MBBS, MHS • David Thayer, PhD, MD •Franklin N. Tessler, MD • William D. Middleton, MD • Maciej A. Mazurowski, PhD*
1.**Liver fibrosis classification based on transfer learning and FCNet for ultrasound images,** IEEE Access (2017) [*[read]*](/Applications/Deep%20Learning/Liver%20fibrosis%20classification%20based%20on%20transfer%20learning%20and%20FCNet%20for%20ultrasound%20images.pdf)
1.**Breast Tumor Detection in Ultrasound Images Using Deep Learning,**__Conference Paper__ in Lecture Notes in Computer Science · August 2017 [*[read]*](/Applications/Deep%20Learning/Breast%20Tumor%20Detection%20in%20Ultrasound%20Images%20Using%20Deep%20Learning.pdf)
1.**Automated detection and classification of thyroid nodules in ultrasound images using clinical-knowledge-guided convolutional neural networks,** Medical Image Analysis, 58(2019) [*[read]*](https://github.com/vonpower/Healthcare/blob/main/Applications/Deep%20Learning/AutomatedDetectionandClassificationofThyroidNodulesinUltrasoundImagesUsingClinical-Knowledge-GuidedConvolutionalNeuralNetworks-Proof.pdf)
1.**Ensembled deep learning model outperforms human experts in diagnosing biliary atresia from sonographic gallbladder images,** nature communications, 2021 [*[read]*](https://github.com/vonpower/Healthcare/blob/main/Applications/Deep%20Learning/Ensembled%20deep%20learning%20model%20outperforms%20human%20experts%20in%20diagnosing.pdf)
1.**Radiomics Analysis for Evaluation of Pathological Complete Response to Neoadjuvant Chemoradiotherapy in Locally Advanced Rectal Cancer,** Clinical Cancer Research (2017) [*[read]*](https://github.com/vonpower/Healthcare/blob/main/Applications/Radiomics/%E9%9D%9E%E8%B6%85%E5%A3%B0%E5%BD%B1%E5%83%8F/2017-Radiomics%20Analysis%20for%20Evaluation%20of%20Pathological%20Complete%20Response%20to%20Neoadjuvant%20Chemoradiotherapy%20in%20Locally%20Advanced%20Rectal%20Cancer.pdf)
1.**Multiple-correlation similarity for block-matching based fast CT to ultrasound registration in liver interventions**,Medical Image Analysis, (2019) [*[read]*](https://github.com/vonpower/Healthcare/blob/main/Applications/Combination/Deep%20Learning%2BRadiomics/j.media.2019.02.003.pdf)
1.**A Survey on Domain Knowledge Powered Deep Learning for Medical Image Analysis**,arXiv e-prints, (2020) [*[read]*](/Servey%20And%20Review/A%20Survey%20on%20Domain%20Knowledge%20Powered%20Deep.pdf)