SCouT: Synthetic Counterfactuals via Spatiotemporal Transformers for
Actionable Healthcare
- URL: http://arxiv.org/abs/2207.04208v1
- Date: Sat, 9 Jul 2022 07:00:17 GMT
- Title: SCouT: Synthetic Counterfactuals via Spatiotemporal Transformers for
Actionable Healthcare
- Authors: Bhishma Dedhia, Roshini Balasubramanian and Niraj K. Jha
- Abstract summary: The Synthetic Control method has pioneered a class of powerful data-driven techniques to estimate the counterfactual reality of a unit from donor units.
At its core, the technique involves a linear model fitted on the pre-intervention period that combines donor outcomes to yield the counterfactual.
We propose an approach to use localtemporal information before the onset of the intervention as a promising way to estimate the counterfactual sequence.
- Score: 6.431557011732579
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The Synthetic Control method has pioneered a class of powerful data-driven
techniques to estimate the counterfactual reality of a unit from donor units.
At its core, the technique involves a linear model fitted on the
pre-intervention period that combines donor outcomes to yield the
counterfactual. However, linearly combining spatial information at each time
instance using time-agnostic weights fails to capture important inter-unit and
intra-unit temporal contexts and complex nonlinear dynamics of real data. We
instead propose an approach to use local spatiotemporal information before the
onset of the intervention as a promising way to estimate the counterfactual
sequence. To this end, we suggest a Transformer model that leverages particular
positional embeddings, a modified decoder attention mask, and a novel
pre-training task to perform spatiotemporal sequence-to-sequence modeling. Our
experiments on synthetic data demonstrate the efficacy of our method in the
typical small donor pool setting and its robustness against noise. We also
generate actionable healthcare insights at the population and patient levels by
simulating a state-wide public health policy to evaluate its effectiveness, an
in silico trial for asthma medications to support randomized controlled trials,
and a medical intervention for patients with Friedreich's ataxia to improve
clinical decision-making and promote personalized therapy.
Related papers
- Deep State-Space Generative Model For Correlated Time-to-Event Predictions [54.3637600983898]
We propose a deep latent state-space generative model to capture the interactions among different types of correlated clinical events.
Our method also uncovers meaningful insights about the latent correlations among mortality and different types of organ failures.
arXiv Detail & Related papers (2024-07-28T02:42:36Z) - Counterfactual Generative Models for Time-Varying Treatments [15.208067770012283]
Estimating the counterfactual outcome of treatment is essential for decision-making in public health and clinical science.
We propose a novel conditional generative framework capable of producing counterfactual samples under time-varying treatment.
We present a thorough evaluation of our method using both synthetic and real-world data.
arXiv Detail & Related papers (2023-05-25T05:45:53Z) - Policy Optimization for Personalized Interventions in Behavioral Health [8.10897203067601]
Behavioral health interventions, delivered through digital platforms, have the potential to significantly improve health outcomes.
We study the problem of optimizing personalized interventions for patients to maximize a long-term outcome.
We present a new approach for this problem that we dub DecompPI, which decomposes the state space for a system of patients to the individual level.
arXiv Detail & Related papers (2023-03-21T21:42:03Z) - Synthetic Blip Effects: Generalizing Synthetic Controls for the Dynamic
Treatment Regime [31.194595148880573]
We consider the estimation of unit-specific treatment effects from panel data collected via a dynamic treatment regime.
We propose an identification strategy for any unit-specific mean outcome under any sequence of interventions.
arXiv Detail & Related papers (2022-10-20T04:11:20Z) - Continuous-Time Modeling of Counterfactual Outcomes Using Neural
Controlled Differential Equations [84.42837346400151]
Estimating counterfactual outcomes over time has the potential to unlock personalized healthcare.
Existing causal inference approaches consider regular, discrete-time intervals between observations and treatment decisions.
We propose a controllable simulation environment based on a model of tumor growth for a range of scenarios.
arXiv Detail & Related papers (2022-06-16T17:15:15Z) - Disentangled Counterfactual Recurrent Networks for Treatment Effect
Inference over Time [71.30985926640659]
We introduce the Disentangled Counterfactual Recurrent Network (DCRN), a sequence-to-sequence architecture that estimates treatment outcomes over time.
With an architecture that is completely inspired by the causal structure of treatment influence over time, we advance forecast accuracy and disease understanding.
We demonstrate that DCRN outperforms current state-of-the-art methods in forecasting treatment responses, on both real and simulated data.
arXiv Detail & Related papers (2021-12-07T16:40:28Z) - Real-time landmark detection for precise endoscopic submucosal
dissection via shape-aware relation network [51.44506007844284]
We propose a shape-aware relation network for accurate and real-time landmark detection in endoscopic submucosal dissection surgery.
We first devise an algorithm to automatically generate relation keypoint heatmaps, which intuitively represent the prior knowledge of spatial relations among landmarks.
We then develop two complementary regularization schemes to progressively incorporate the prior knowledge into the training process.
arXiv Detail & Related papers (2021-11-08T07:57:30Z) - A Model-Based Approach to Synthetic Data Set Generation for
Patient-Ventilator Waveforms for Machine Learning and Educational Use [0.0]
We propose a model-based approach to generate a synthetic data set for machine learning and educational use.
We generated a synthetic data set using 9 different patient archetypes, which are derived from measurements in the literature.
arXiv Detail & Related papers (2021-03-29T15:10:17Z) - MIA-Prognosis: A Deep Learning Framework to Predict Therapy Response [58.0291320452122]
This paper aims at a unified deep learning approach to predict patient prognosis and therapy response.
We formalize the prognosis modeling as a multi-modal asynchronous time series classification task.
Our predictive model could further stratify low-risk and high-risk patients in terms of long-term survival.
arXiv Detail & Related papers (2020-10-08T15:30:17Z) - Estimating Counterfactual Treatment Outcomes over Time Through
Adversarially Balanced Representations [114.16762407465427]
We introduce the Counterfactual Recurrent Network (CRN) to estimate treatment effects over time.
CRN uses domain adversarial training to build balancing representations of the patient history.
We show how our model achieves lower error in estimating counterfactuals and in choosing the correct treatment and timing of treatment.
arXiv Detail & Related papers (2020-02-10T20:47:36Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.