Narges Razavian
New York University
Network
Latest external collaboration on country level. Dive into details by clicking on the dots.
Publication
Featured researches published by Narges Razavian.
BMC Genomics | 2012
Narges Razavian; Hetunandan Kamisetty; Christopher James Langmead
We introduce three algorithms for learning generative models of molecular structures from molecular dynamics simulations. The first algorithm learns a Bayesian-optimal undirected probabilistic model over user-specified covariates (e.g., fluctuations, distances, angles, etc). L1 reg-ularization is used to ensure sparse models and thus reduce the risk of over-fitting the data. The topology of the resulting model reveals important couplings between different parts of the protein, thus aiding in the analysis of molecular motions. The generative nature of the model makes it well-suited to making predictions about the global effects of local structural changes (e.g., the binding of an allosteric regulator). Additionally, the model can be used to sample new conformations. The second algorithm learns a time-varying graphical model where the topology and parameters change smoothly along the trajectory, revealing the conformational sub-states. The last algorithm learns a Markov Chain over undirected graphical models which can be used to study and simulate kinetics. We demonstrate our algorithms on multiple molecular dynamics trajectories.
Nature Medicine | 2018
Nicolas Coudray; Paolo Santiago Ocampo; Theodore Sakellaropoulos; Navneet Narula; Matija Snuderl; David Fenyö; Andre L. Moreira; Narges Razavian; Aristotelis Tsirigos
Visual inspection of histopathology slides is one of the main methods used by pathologists to assess the stage, type and subtype of lung tumors. Adenocarcinoma (LUAD) and squamous cell carcinoma (LUSC) are the most prevalent subtypes of lung cancer, and their distinction requires visual inspection by an experienced pathologist. In this study, we trained a deep convolutional neural network (inception v3) on whole-slide images obtained from The Cancer Genome Atlas to accurately and automatically classify them into LUAD, LUSC or normal lung tissue. The performance of our method is comparable to that of pathologists, with an average area under the curve (AUC) of 0.97. Our model was validated on independent datasets of frozen tissues, formalin-fixed paraffin-embedded tissues and biopsies. Furthermore, we trained the network to predict the ten most commonly mutated genes in LUAD. We found that six of them—STK11, EGFR, FAT1, SETBP1, KRAS and TP53—can be predicted from pathology images, with AUCs from 0.733 to 0.856 as measured on a held-out population. These findings suggest that deep-learning models can assist pathologists in the detection of cancer subtype or gene mutations. Our approach can be applied to any cancer type, and the code is available at https://github.com/ncoudray/DeepPATH.A convolutional neural network model using feature extraction and machine-learning techniques provides a tool for classification of lung cancer histopathology images and predicting mutational status of driver oncogenes
ACM Crossroads Student Magazine | 2015
Narges Razavian
Suchi Saria of Johns Hopkins University shares how big data and machine learning can help improve the practice of healthcare, and how computing students can contribute.
arXiv: Learning | 2016
Narges Razavian; Jake Marcus; David Sontag
arXiv: Learning | 2015
Narges Razavian; David Sontag
meeting of the association for computational linguistics | 2010
Narges Razavian; Stephan Vogel
Archive | 2010
Narges Razavian; Subhodeep Moitra; Hetunandan Kamisetty; Arvind Ramanathan; Christopher James Langmead
arXiv: Learning | 2018
Jingshu Liu; Zachariah Zhang; Narges Razavian
Cancer Research | 2018
Nicolas Coudray; Andre L. Moreira; Theodore Sakellaropoulos; David Fenyö; Narges Razavian; Aristotelis Tsirigos
American Journal of Roentgenology | 2018
Eyal Lotan; Rajan Jain; Narges Razavian; Girish Fatterpekar; Yvonne W. Lui