<p>We trained a classifier to predict phase III clinical trial outcomes, using 5-fold cross-validation repeated 200 times to assess the stability of the classifier and estimate its generalization performance. For each fold of cross-validation, modeling began with the non-redundant features for each dataset. <b>Step 1:</b> We split the targets with phase III outcomes into training and testing sets. <b>Step 2:</b> We performed univariate feature selection using permutation tests to quantify the significance of the difference between the means of the successful and failed targets in the training examples. We controlled for target class as a confounding factor by only shuffling outcomes within target classes. We accepted features with adjusted ...
<p>(A) Cross-validation (CV) performance of models trained on all available native IRES sequences sh...
<p>Input: patient-specific mRNA expression data where <i>E</i> is an expression matrix and <i>L</i>...
Clinical trials increasingly employ medical imaging data in conjunction with supervised clas-sifiers...
<p>Each dataset took the form of a matrix with genes labeling the rows and features labeling the col...
<p><b>(A)</b> Receiver operating characteristic (ROC) curve. The solid black line indicates the medi...
The data was split temporally into a training/validation dataset (2016) and testing dataset (2017). ...
Our pipeline can be separated into three parts: (i) initial data preparation, (ii) training and pred...
<p>The second column gives the performance of an Elastic Net model under cross-validation on the tra...
From each dataset, 30% of the participants were extracted, concatenated and left aside as test set f...
<p>The upper panel illustrates the combination of the inner cross-validation loop, which is used to ...
<p>The full dataset is a gene expression matrix with 8,000 features (the genes) as rows and 30 sampl...
The process of FS and classification consists of the following steps: 1) create 100 random splits of...
The training scores (R2) and cross validation (CV) scores (also R2) are shown. Below 800 training ex...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...
<div><p>Clinical trials increasingly employ medical imaging data in conjunction with supervised clas...
<p>(A) Cross-validation (CV) performance of models trained on all available native IRES sequences sh...
<p>Input: patient-specific mRNA expression data where <i>E</i> is an expression matrix and <i>L</i>...
Clinical trials increasingly employ medical imaging data in conjunction with supervised clas-sifiers...
<p>Each dataset took the form of a matrix with genes labeling the rows and features labeling the col...
<p><b>(A)</b> Receiver operating characteristic (ROC) curve. The solid black line indicates the medi...
The data was split temporally into a training/validation dataset (2016) and testing dataset (2017). ...
Our pipeline can be separated into three parts: (i) initial data preparation, (ii) training and pred...
<p>The second column gives the performance of an Elastic Net model under cross-validation on the tra...
From each dataset, 30% of the participants were extracted, concatenated and left aside as test set f...
<p>The upper panel illustrates the combination of the inner cross-validation loop, which is used to ...
<p>The full dataset is a gene expression matrix with 8,000 features (the genes) as rows and 30 sampl...
The process of FS and classification consists of the following steps: 1) create 100 random splits of...
The training scores (R2) and cross validation (CV) scores (also R2) are shown. Below 800 training ex...
Clinical trials increasingly employ medical imaging data in conjunction with supervised classifiers,...
<div><p>Clinical trials increasingly employ medical imaging data in conjunction with supervised clas...
<p>(A) Cross-validation (CV) performance of models trained on all available native IRES sequences sh...
<p>Input: patient-specific mRNA expression data where <i>E</i> is an expression matrix and <i>L</i>...
Clinical trials increasingly employ medical imaging data in conjunction with supervised clas-sifiers...