First Investigation Into the Use of Deep Learning for Continuous
Assessment of Neonatal Postoperative Pain
- URL: http://arxiv.org/abs/2003.10601v1
- Date: Tue, 24 Mar 2020 01:13:07 GMT
- Title: First Investigation Into the Use of Deep Learning for Continuous
Assessment of Neonatal Postoperative Pain
- Authors: Md Sirajus Salekin, Ghada Zamzmi, Dmitry Goldgof, Rangachar Kasturi,
Thao Ho and Yu Sun
- Abstract summary: It specifically investigates the use of Bilinear Convolutional Neural Network (B-CNN) to extract facial features during different levels of postoperative pain.
Our experimental results indicate a clear difference between the pattern of acute and postoperative pain.
They also suggest the efficiency of using a combination of bilinear CNN with RNN model for the continuous assessment of postoperative pain intensity.
- Score: 4.121183008006413
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper presents the first investigation into the use of fully automated
deep learning framework for assessing neonatal postoperative pain. It
specifically investigates the use of Bilinear Convolutional Neural Network
(B-CNN) to extract facial features during different levels of postoperative
pain followed by modeling the temporal pattern using Recurrent Neural Network
(RNN). Although acute and postoperative pain have some common characteristics
(e.g., visual action units), postoperative pain has a different dynamic, and it
evolves in a unique pattern over time. Our experimental results indicate a
clear difference between the pattern of acute and postoperative pain. They also
suggest the efficiency of using a combination of bilinear CNN with RNN model
for the continuous assessment of postoperative pain intensity.
Related papers
- Intraoperative Registration by Cross-Modal Inverse Neural Rendering [61.687068931599846]
We present a novel approach for 3D/2D intraoperative registration during neurosurgery via cross-modal inverse neural rendering.
Our approach separates implicit neural representation into two components, handling anatomical structure preoperatively and appearance intraoperatively.
We tested our method on retrospective patients' data from clinical cases, showing that our method outperforms state-of-the-art while meeting current clinical standards for registration.
arXiv Detail & Related papers (2024-09-18T13:40:59Z) - Prediction of Post-Operative Renal and Pulmonary Complications Using
Transformers [69.81176740997175]
We evaluate the performance of transformer-based models in predicting postoperative acute renal failure, pulmonary complications, and postoperative in-hospital mortality.
Our results demonstrate that transformer-based models can achieve superior performance in predicting postoperative complications and outperform traditional machine learning models.
arXiv Detail & Related papers (2023-06-01T14:08:05Z) - Tissue Classification During Needle Insertion Using Self-Supervised
Contrastive Learning and Optical Coherence Tomography [53.38589633687604]
We propose a deep neural network that classifies the tissues from the phase and intensity data of complex OCT signals acquired at the needle tip.
We show that with 10% of the training set, our proposed pretraining strategy helps the model achieve an F1 score of 0.84 whereas the model achieves an F1 score of 0.60 without it.
arXiv Detail & Related papers (2023-04-26T14:11:04Z) - Individualized Risk Assessment of Preoperative Opioid Use by
Interpretable Neural Network Regression [6.474106608218618]
Preoperative opioid use has been reported to be associated with higher preoperative opioid demand, worse postoperative outcomes, and increased postoperative healthcare utilization and expenditures.
Deep neural network (DNN) has emerged as a powerful means for risk assessment because of its superb prediction power.
We propose a novel Interpretable Neural Network Regression (INNER) which combines the strengths of statistical and DNN models.
arXiv Detail & Related papers (2022-05-07T02:35:04Z) - Intelligent Sight and Sound: A Chronic Cancer Pain Dataset [74.77784420691937]
This paper introduces the first chronic cancer pain dataset, collected as part of the Intelligent Sight and Sound (ISS) clinical trial.
The data collected to date consists of 29 patients, 509 smartphone videos, 189,999 frames, and self-reported affective and activity pain scores.
Using static images and multi-modal data to predict self-reported pain levels, early models show significant gaps between current methods available to predict pain.
arXiv Detail & Related papers (2022-04-07T22:14:37Z) - Evaluating U-net Brain Extraction for Multi-site and Longitudinal
Preclinical Stroke Imaging [0.4310985013483366]
Convolutional neural networks (CNNs) can improve accuracy and reduce operator time.
We developed a deep-learning mouse brain extraction tool by using a U-net CNN.
We trained, validated, and tested a typical U-net model on 240 multimodal MRI datasets.
arXiv Detail & Related papers (2022-03-11T02:00:27Z) - End-to-End Blind Quality Assessment for Laparoscopic Videos using Neural
Networks [9.481148895837812]
We propose in this paper neural network-based approaches for distortion classification as well as quality prediction.
To train the overall architecture (ResNet and FCNN models), transfer learning and end-to-end learning approaches are investigated.
Experimental results, carried out on a new laparoscopic video quality database, have shown the efficiency of the proposed methods.
arXiv Detail & Related papers (2022-02-09T15:29:02Z) - InDuDoNet+: A Model-Driven Interpretable Dual Domain Network for Metal
Artifact Reduction in CT Images [53.4351366246531]
We construct a novel interpretable dual domain network, termed InDuDoNet+, into which CT imaging process is finely embedded.
We analyze the CT values among different tissues, and merge the prior observations into a prior network for our InDuDoNet+, which significantly improve its generalization performance.
arXiv Detail & Related papers (2021-12-23T15:52:37Z) - Multimodal Spatio-Temporal Deep Learning Approach for Neonatal
Postoperative Pain Assessment [3.523040451502402]
Current practice for assessing neonatal postoperative pain is subjective, inconsistent, slow and discontinuous.
We present a novel multimodal-temporal approach that integrates visual and vocal signals and uses them for assessing neonatal postoperative pain.
arXiv Detail & Related papers (2020-12-03T18:52:35Z) - Retinopathy of Prematurity Stage Diagnosis Using Object Segmentation and
Convolutional Neural Networks [68.96150598294072]
Retinopathy of Prematurity (ROP) is an eye disorder primarily affecting premature infants with lower weights.
It causes proliferation of vessels in the retina and could result in vision loss and, eventually, retinal detachment, leading to blindness.
In recent years, there has been a significant effort to automate the diagnosis using deep learning.
This paper builds upon the success of previous models and develops a novel architecture, which combines object segmentation and convolutional neural networks (CNN)
Our proposed system first trains an object segmentation model to identify the demarcation line at a pixel level and adds the resulting mask as an additional "color" channel in
arXiv Detail & Related papers (2020-04-03T14:07:41Z)
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.