1
jaredleekatzman/DeepSurv: Second Release of DeepSurv
2
Self-Normalizing Neural Networks
3
IHC4 score plus clinical treatment score predicts locoregional recurrence in early breast cancer.
4
Comparing Breast Cancer Multiparameter Tests in the OPTIMA Prelim Trial: No Test Is More Equal Than the Others.
6
Theano: A Python framework for fast computation of mathematical expressions
7
Development and Validation of a Prediction Rule for Benefit and Harm of Dual Antiplatelet Therapy Beyond 1 Year After Percutaneous Coronary Intervention.
9
Batch Normalization: Accelerating Deep Network Training by Reducing Internal Covariate Shift
10
Adam: A Method for Stochastic Optimization
11
An empirical study of learning rates in deep neural networks for speech recognition
12
Development of a Prognostic Model for Breast Cancer Survival in an Open Challenge Environment
13
External validation of a Cox prognostic model: principles and methods
14
Reducing and meta-analysing estimates from distributed lag non-linear models
15
Gradient methods for minimizing composite functions
16
Understanding the exploding gradient problem
17
Generating survival times to simulate Cox proportional hazards models with time-varying covariates
18
Biomolecular Events in Cancer Revealed by Attractor Metagenes
19
The genomic and transcriptomic architecture of 2,000 breast tumours reveals novel subgroups
20
Random Search for Hyper-Parameter Optimization
21
Integrated Genomic Analyses of Ovarian Carcinoma
22
Rectified Linear Units Improve Restricted Boltzmann Machines
23
Twenty-year trends in the incidence of stroke complicating acute myocardial infarction: Worcester Heart Attack Study.
24
Random survival forests
25
Applied Survival Analysis: Regression Modeling of Time-to-Event Data
26
Gradient methods for minimizing composite objective function
27
Improvement of breast cancer relapse prediction in high risk intervals using artificial neural networks
28
Semi-Supervised Methods to Predict Patient Survival from Gene Expression Data
29
Tamoxifen: a most unlikely pioneering medicine
30
Comparison of artificial neural networks with other statistical approaches
31
Comparison of the performance of neural network methods and Cox regression for censored survival data
32
Applied Survival Analysis: Regression Modeling of Time to Event Data
33
What do we mean by validating a prognostic model?
34
On the misuses of artificial neural networks for prognostic and diagnostic classification in oncology.
35
The urokinase system of plasminogen activation and prognosis in 2780 breast cancer patients.
36
Sex differences in mortality after myocardial infarction: evidence for a sex-age interaction.
37
A Neural Network Model for Prognostic Prediction
38
Feed forward neural networks for the analysis of censored survival data: a partial logistic regression approach.
39
Prognostic factors for metachronous contralateral breast cancer: A comparison of the linear Cox regression model and its artificial neural network extension
40
[A randomized 2 x 2 trial evaluating hormonal treatment and the duration of chemotherapy in node-positive breast cancer patients].
42
An Introduction to the Bootstrap
43
A neural network model for survival data.
44
Randomized 2 x 2 trial evaluating hormonal treatment and the duration of chemotherapy in node-positive breast cancer patients. German Breast Cancer Study Group.
45
Survival analysis and neural nets.
46
Algorithm 647: Implementation and Relative Efficiency of Quasirandom Sequence Generators
47
Regression modelling strategies for improved prognostic prediction.
48
Organochlorine and mercury residues in the harp seal (Pagophilus groenlandicus).
49
Modeling Survival Data Extending The Cox Model
50
Random Forests for Survival, Regression and Classification (RF-SRC), 2016. R package version 2.3.0
52
Dropout: a simple way to prevent neural networks from overfitting
54
Random Survival Forests for R
55
An Introduction to the Bootstrap
56
Artificial neural networks and prognosis in medicine. Survival analysis in breast cancer patients
57
On the misuses of arti " cial neural networks for prognostic and diagnostic classi " cation in oncology
58
The SUPPORT prognostic model. Objective estimates of survival for seriously ill hospitalized adults. Study to understand prognoses and preferences for outcomes and risks of treatments.
59
Uniformly distributed sequences with an additional uniform property
60
Regression Models and Life-Tables
61
Regression Models and Life-Tables