Abstract

BackgroundAccurate predictive modeling in clinical research enables effective early intervention that patients are most likely to benefit from. However, due to the complex biological nature of disease progression, capturing the highly non-linear information from low-level input features is quite challenging. This requires predictive models with high-capacity. In practice, clinical datasets are often of limited size, bringing danger of overfitting for high-capacity models. To address these two challenges, we propose a deep multi-task neural network for predictive modeling.MethodsThe proposed network leverages clinical measures as auxiliary targets that are related to the primary target. The predictions for the primary and auxiliary targets are made simultaneously by the neural network. Network structure is specifically designed to capture the clinical relevance by learning a shared feature representation between the primary and auxiliary targets. We apply the proposed model in a hypertension dataset and a breast cancer dataset, where the primary tasks are to predict the left ventricular mass indexed to body surface area and the time of recurrence of breast cancer. Moreover, we analyze the weights of the proposed neural network to rank input features for model interpretability.ResultsThe experimental results indicate that the proposed model outperforms other different models, achieving the best predictive accuracy (mean squared error 199.76 for hypertension data, 860.62 for Wisconsin prognostic breast cancer data) with the ability to rank features according to their contributions to the targets. The ranking is supported by previous related research.ConclusionWe propose a novel effective method for clinical predictive modeling by combing the deep neural network and multi-task learning. By leveraging auxiliary measures clinically related to the primary target, our method improves the predictive accuracy. Based on featue ranking, our model is interpreted and shows consistency with previous studies on cardiovascular diseases and cancers.

Highlights

  • Accurate predictive modeling in clinical research enables effective early intervention that patients are most likely to benefit from

  • Deep neural network (DNN) have the capability of learning high-level feature representations, rendering better predictions based on those abstract features

  • generalized auxiliary-task augmented network (GATAN)-1 improves Mean squared error (MSE) approximately 3% compared with Lasso; compared with MTLasso, they performs better with margins 5% (MSE), 13% (EVS), 2% (MAE)

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Summary

Introduction

Accurate predictive modeling in clinical research enables effective early intervention that patients are most likely to benefit from. Due to the complex biological nature of disease progression, capturing the highly non-linear information from low-level input features is quite challenging. Clinical datasets are often of limited size, bringing danger of overfitting for high-capacity models To address these two challenges, we propose a deep multi-task neural network for predictive modeling. DNNs have the capability of learning high-level feature representations, rendering better predictions based on those abstract features This enables DNN to capture the non-linear relations of low-level features, making itself promising in clinical research. Fitting a highcapacity model could potentially overfit the small amount of labeled data

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