Health improvement framework for planning actionable treatment process
using surrogate Bayesian model
- URL: http://arxiv.org/abs/2010.16087v2
- Date: Fri, 13 Nov 2020 08:13:18 GMT
- Title: Health improvement framework for planning actionable treatment process
using surrogate Bayesian model
- Authors: Kazuki Nakamura, Ryosuke Kojima, Eiichiro Uchino, Koichi Murashita,
Ken Itoh, Shigeyuki Nakaji and Yasushi Okuno
- Abstract summary: This study proposes a novel framework to plan treatment processes in a data-driven manner.
A key point of the framework is the evaluation of the "actionability" for personal health improvements.
- Score: 1.2468700211588881
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Clinical decision making regarding treatments based on personal
characteristics leads to effective health improvements. Machine learning (ML)
has been the primary concern of diagnosis support according to comprehensive
patient information. However, the remaining prominent issue is the development
of objective treatment processes in clinical situations. This study proposes a
novel framework to plan treatment processes in a data-driven manner. A key
point of the framework is the evaluation of the "actionability" for personal
health improvements by using a surrogate Bayesian model in addition to a
high-performance nonlinear ML model. We first evaluated the framework from the
viewpoint of its methodology using a synthetic dataset. Subsequently, the
framework was applied to an actual health checkup dataset comprising data from
3,132 participants, to improve systolic blood pressure values at the individual
level. We confirmed that the computed treatment processes are actionable and
consistent with clinical knowledge for lowering blood pressure. These results
demonstrate that our framework could contribute toward decision making in the
medical field, providing clinicians with deeper insights.
Related papers
- Methodological Explainability Evaluation of an Interpretable Deep Learning Model for Post-Hepatectomy Liver Failure Prediction Incorporating Counterfactual Explanations and Layerwise Relevance Propagation: A Prospective In Silico Trial [13.171582596404313]
We developed a variational autoencoder-multilayer perceptron (VAE-MLP) model for preoperative PHLF prediction.
This model integrated counterfactuals and layerwise relevance propagation (LRP) to provide insights into its decision-making mechanism.
Results from the three-track in silico clinical trial showed that clinicians' prediction accuracy and confidence increased when AI explanations were provided.
arXiv Detail & Related papers (2024-08-07T13:47:32Z) - Medical Knowledge Integration into Reinforcement Learning Algorithms for Dynamic Treatment Regimes [1.4088763981769077]
Dynamic Treatment Regimes (DTR) adapt treatment strategies based on decision rules learned from clinical data to enhance therapeutic effectiveness.
Reinforcement Learning (RL) algorithms allow to determine these decision rules conditioned by individual patient data and their medical history.
The integration of medical expertise into these models makes possible to increase confidence in treatment recommendations and facilitate the adoption of this approach by healthcare professionals and patients.
arXiv Detail & Related papers (2024-06-29T08:23:01Z) - Optimizing Skin Lesion Classification via Multimodal Data and Auxiliary
Task Integration [54.76511683427566]
This research introduces a novel multimodal method for classifying skin lesions, integrating smartphone-captured images with essential clinical and demographic information.
A distinctive aspect of this method is the integration of an auxiliary task focused on super-resolution image prediction.
The experimental evaluations have been conducted using the PAD-UFES20 dataset, applying various deep-learning architectures.
arXiv Detail & Related papers (2024-02-16T05:16:20Z) - Causal Inference under Data Restrictions [0.0]
This dissertation focuses on modern causal inference under uncertainty and data restrictions.
It includes applications to neoadjuvant clinical trials, distributed data networks, and robust individualized decision making.
arXiv Detail & Related papers (2023-01-20T20:14:32Z) - Benchmarking Heterogeneous Treatment Effect Models through the Lens of
Interpretability [82.29775890542967]
Estimating personalized effects of treatments is a complex, yet pervasive problem.
Recent developments in the machine learning literature on heterogeneous treatment effect estimation gave rise to many sophisticated, but opaque, tools.
We use post-hoc feature importance methods to identify features that influence the model's predictions.
arXiv Detail & Related papers (2022-06-16T17:59:05Z) - Optimal discharge of patients from intensive care via a data-driven
policy learning framework [58.720142291102135]
It is important that the patient discharge task addresses the nuanced trade-off between decreasing a patient's length of stay and the risk of readmission or even death following the discharge decision.
This work introduces an end-to-end general framework for capturing this trade-off to recommend optimal discharge timing decisions.
A data-driven approach is used to derive a parsimonious, discrete state space representation that captures a patient's physiological condition.
arXiv Detail & Related papers (2021-12-17T04:39:33Z) - Literature-Augmented Clinical Outcome Prediction [10.46990394710927]
We introduce techniques to help bridge this gap between EBM and AI-based clinical models.
We propose a novel system that automatically retrieves patient-specific literature based on intensive care (ICU) patient information.
Our model is able to substantially boost predictive accuracy on three challenging tasks in comparison to strong recent baselines.
arXiv Detail & Related papers (2021-11-16T11:19:02Z) - Development of patients triage algorithm from nationwide COVID-19
registry data based on machine learning [1.0323063834827415]
This paper provides the development processes of the severity assessment model using machine learning techniques.
Model only requires basic patients' basic personal data, allowing for them to judge their own severity.
We aim to establish a medical system that allows patients to check their own severity and informs them to visit the appropriate clinic center based on the past treatment details of other patients with similar severity.
arXiv Detail & Related papers (2021-09-18T19:56:27Z) - The Medkit-Learn(ing) Environment: Medical Decision Modelling through
Simulation [81.72197368690031]
We present a new benchmarking suite designed specifically for medical sequential decision making.
The Medkit-Learn(ing) Environment is a publicly available Python package providing simple and easy access to high-fidelity synthetic medical data.
arXiv Detail & Related papers (2021-06-08T10:38:09Z) - Clinical Outcome Prediction from Admission Notes using Self-Supervised
Knowledge Integration [55.88616573143478]
Outcome prediction from clinical text can prevent doctors from overlooking possible risks.
Diagnoses at discharge, procedures performed, in-hospital mortality and length-of-stay prediction are four common outcome prediction targets.
We propose clinical outcome pre-training to integrate knowledge about patient outcomes from multiple public sources.
arXiv Detail & Related papers (2021-02-08T10:26:44Z) - Explaining Clinical Decision Support Systems in Medical Imaging using
Cycle-Consistent Activation Maximization [112.2628296775395]
Clinical decision support using deep neural networks has become a topic of steadily growing interest.
clinicians are often hesitant to adopt the technology because its underlying decision-making process is considered to be intransparent and difficult to comprehend.
We propose a novel decision explanation scheme based on CycleGAN activation which generates high-quality visualizations of classifier decisions even in smaller data sets.
arXiv Detail & Related papers (2020-10-09T14:39:27Z)
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.