Medical Profile Model: Scientific and Practical Applications in
Healthcare
- URL: http://arxiv.org/abs/2107.03913v3
- Date: Sun, 29 Oct 2023 08:04:16 GMT
- Title: Medical Profile Model: Scientific and Practical Applications in
Healthcare
- Authors: Pavel Blinov, Vladimir Kokh
- Abstract summary: We present the patient histories as temporal sequences of diseases for which embeddings are learned in an unsupervised setup.
The embedding space includes demographic parameters which allow the creation of generalized patient profiles.
The training of such a medical profile model has been performed on a dataset of more than one million patients.
- Score: 1.718235998156457
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The paper researches the problem of representation learning for electronic
health records. We present the patient histories as temporal sequences of
diseases for which embeddings are learned in an unsupervised setup with a
transformer-based neural network model. Additionally the embedding space
includes demographic parameters which allow the creation of generalized patient
profiles and successful transfer of medical knowledge to other domains. The
training of such a medical profile model has been performed on a dataset of
more than one million patients. Detailed model analysis and its comparison with
the state-of-the-art method show its clear advantage in the diagnosis
prediction task. Further, we show two applications based on the developed
profile model. First, a novel Harbinger Disease Discovery method allowing to
reveal disease associated hypotheses and potentially are beneficial in the
design of epidemiological studies. Second, the patient embeddings extracted
from the profile model applied to the insurance scoring task allow significant
improvement in the performance metrics.
Related papers
- Towards a Transportable Causal Network Model Based on Observational
Healthcare Data [1.333879175460266]
We propose a novel approach that combines selection diagrams, missingness graphs, causal discovery and prior knowledge into a single graphical model.
We learn this model from data comprising two different cohorts of patients.
The resulting causal network model is validated by expert clinicians in terms of risk assessment, accuracy and explainability.
arXiv Detail & Related papers (2023-11-13T13:23:31Z) - An Interpretable Deep-Learning Framework for Predicting Hospital
Readmissions From Electronic Health Records [2.156208381257605]
We propose a novel, interpretable deep-learning framework for predicting unplanned hospital readmissions.
We validate our system on the two predictive tasks of hospital readmission within 30 and 180 days, using real-world data.
arXiv Detail & Related papers (2023-10-16T08:48:52Z) - MedDiffusion: Boosting Health Risk Prediction via Diffusion-based Data
Augmentation [58.93221876843639]
This paper introduces a novel, end-to-end diffusion-based risk prediction model, named MedDiffusion.
It enhances risk prediction performance by creating synthetic patient data during training to enlarge sample space.
It discerns hidden relationships between patient visits using a step-wise attention mechanism, enabling the model to automatically retain the most vital information for generating high-quality data.
arXiv Detail & Related papers (2023-10-04T01:36:30Z) - Safe AI for health and beyond -- Monitoring to transform a health
service [51.8524501805308]
We will assess the infrastructure required to monitor the outputs of a machine learning algorithm.
We will present two scenarios with examples of monitoring and updates of models.
arXiv Detail & Related papers (2023-03-02T17:27:45Z) - This Patient Looks Like That Patient: Prototypical Networks for
Interpretable Diagnosis Prediction from Clinical Text [56.32427751440426]
In clinical practice such models must not only be accurate, but provide doctors with interpretable and helpful results.
We introduce ProtoPatient, a novel method based on prototypical networks and label-wise attention.
We evaluate the model on two publicly available clinical datasets and show that it outperforms existing baselines.
arXiv Detail & Related papers (2022-10-16T10:12:07Z) - Modelling Patient Trajectories Using Multimodal Information [0.0]
We propose a solution to model patient trajectories that combines different types of information and considers the temporal aspect of clinical data.
The developed solution was evaluated on two different clinical outcomes, unexpected patient readmission and disease progression.
arXiv Detail & Related papers (2022-09-09T10:20:54Z) - 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) - Adversarial Sample Enhanced Domain Adaptation: A Case Study on
Predictive Modeling with Electronic Health Records [57.75125067744978]
We propose a data augmentation method to facilitate domain adaptation.
adversarially generated samples are used during domain adaptation.
Results confirm the effectiveness of our method and the generality on different tasks.
arXiv Detail & Related papers (2021-01-13T03:20:20Z) - Patient-independent Epileptic Seizure Prediction using Deep Learning
Models [39.19336481493405]
The purpose of a seizure prediction system is to successfully identify the pre-ictal brain stage, which occurs before a seizure event.
Patient-independent seizure prediction models are designed to offer accurate performance across multiple subjects within a dataset.
We propose two patient-independent deep learning architectures with different learning strategies that can learn a global function utilizing data from multiple subjects.
arXiv Detail & Related papers (2020-11-18T23:13:48Z) - Select-ProtoNet: Learning to Select for Few-Shot Disease Subtype
Prediction [55.94378672172967]
We focus on few-shot disease subtype prediction problem, identifying subgroups of similar patients.
We introduce meta learning techniques to develop a new model, which can extract the common experience or knowledge from interrelated clinical tasks.
Our new model is built upon a carefully designed meta-learner, called Prototypical Network, that is a simple yet effective meta learning machine for few-shot image classification.
arXiv Detail & Related papers (2020-09-02T02:50:30Z) - Predicting Clinical Diagnosis from Patients Electronic Health Records
Using BERT-based Neural Networks [62.9447303059342]
We show the importance of this problem in medical community.
We present a modification of Bidirectional Representations from Transformers (BERT) model for classification sequence.
We use a large-scale Russian EHR dataset consisting of about 4 million unique patient visits.
arXiv Detail & Related papers (2020-07-15T09:22:55Z)
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.