Identification of Pediatric Respiratory Diseases Using Fine-grained
Diagnosis System
- URL: http://arxiv.org/abs/2108.10818v1
- Date: Tue, 24 Aug 2021 16:09:39 GMT
- Title: Identification of Pediatric Respiratory Diseases Using Fine-grained
Diagnosis System
- Authors: Gang Yu, Zhongzhi Yu, Yemin Shi, Yingshuo Wang, Xiaoqing Liu, Zheming
Li, Yonggen Zhao, Fenglei Sun, Yizhou Yu, Qiang Shu
- Abstract summary: Respiratory diseases, including asthma, bronchitis, pneumonia, and upper respiratory tract infection (RTI) are among the most common diseases in clinics.
In pediatrics, the patients' limited ability in expressing their situation makes precise diagnosis even harder.
In this paper, a pediatric fine-grained diagnosis-assistant system is proposed to provide prompt and precise diagnosis using solely clinical notes upon admission.
- Score: 41.60894942209209
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Respiratory diseases, including asthma, bronchitis, pneumonia, and upper
respiratory tract infection (RTI), are among the most common diseases in
clinics. The similarities among the symptoms of these diseases precludes prompt
diagnosis upon the patients' arrival. In pediatrics, the patients' limited
ability in expressing their situation makes precise diagnosis even harder. This
becomes worse in primary hospitals, where the lack of medical imaging devices
and the doctors' limited experience further increase the difficulty of
distinguishing among similar diseases. In this paper, a pediatric fine-grained
diagnosis-assistant system is proposed to provide prompt and precise diagnosis
using solely clinical notes upon admission, which would assist clinicians
without changing the diagnostic process. The proposed system consists of two
stages: a test result structuralization stage and a disease identification
stage. The first stage structuralizes test results by extracting relevant
numerical values from clinical notes, and the disease identification stage
provides a diagnosis based on text-form clinical notes and the structured data
obtained from the first stage. A novel deep learning algorithm was developed
for the disease identification stage, where techniques including adaptive
feature infusion and multi-modal attentive fusion were introduced to fuse
structured and text data together. Clinical notes from over 12000 patients with
respiratory diseases were used to train a deep learning model, and clinical
notes from a non-overlapping set of about 1800 patients were used to evaluate
the performance of the trained model. The average precisions (AP) for
pneumonia, RTI, bronchitis and asthma are 0.878, 0.857, 0.714, and 0.825,
respectively, achieving a mean AP (mAP) of 0.819.
Related papers
- Towards reliable respiratory disease diagnosis based on cough sounds and vision transformers [14.144599890583308]
We propose a novel approach to cough-based disease classification based on both self-supervised and supervised learning on a large-scale cough data set.
Experimental results demonstrate our proposed approach outperforms prior arts consistently on two benchmark datasets for COVID-19 diagnosis and a proprietary dataset for COPD/non-COPD classification with an AUROC of 92.5%.
arXiv Detail & Related papers (2024-08-28T09:40:40Z) - A Foundational Framework and Methodology for Personalized Early and
Timely Diagnosis [84.6348989654916]
We propose the first foundational framework for early and timely diagnosis.
It builds on decision-theoretic approaches to outline the diagnosis process.
It integrates machine learning and statistical methodology for estimating the optimal personalized diagnostic path.
arXiv Detail & Related papers (2023-11-26T14:42:31Z) - A Transformer-based representation-learning model with unified
processing of multimodal input for clinical diagnostics [63.106382317917344]
We report a Transformer-based representation-learning model as a clinical diagnostic aid that processes multimodal input in a unified manner.
The unified model outperformed an image-only model and non-unified multimodal diagnosis models in the identification of pulmonary diseases.
arXiv Detail & Related papers (2023-06-01T16:23:47Z) - Automated speech- and text-based classification of neuropsychiatric
conditions in a multidiagnostic setting [2.0972270756982536]
Speech patterns have been identified as potential diagnostic markers for neuropsychiatric conditions.
We tested the performance of a range of machine learning models and advanced Transformer models on both binary and multiclass classification.
Our results indicate that models trained on binary classification may learn to rely on markers of generic differences between clinical and non-clinical populations.
arXiv Detail & Related papers (2023-01-13T08:24:21Z) - NeuralSympCheck: A Symptom Checking and Disease Diagnostic Neural Model
with Logic Regularization [59.15047491202254]
symptom checking systems inquire users for their symptoms and perform a rapid and affordable medical assessment of their condition.
We propose a new approach based on the supervised learning of neural models with logic regularization.
Our experiments show that the proposed approach outperforms the best existing methods in the accuracy of diagnosis when the number of diagnoses and symptoms is large.
arXiv Detail & Related papers (2022-06-02T07:57:17Z) - Lifelong Learning based Disease Diagnosis on Clinical Notes [24.146567779632107]
We propose to adopt attention to combine medical entities and context, embedding episodic memory and consolidation to retain knowledge.
We establish a new benchmark, named Jarvis-40, which contains clinical notes collected from various hospitals.
Our experiments show that the proposed method can achieve state-of-the-art performance on the proposed benchmark.
arXiv Detail & Related papers (2021-02-27T09:23:57Z) - Inheritance-guided Hierarchical Assignment for Clinical Automatic
Diagnosis [50.15205065710629]
Clinical diagnosis, which aims to assign diagnosis codes for a patient based on the clinical note, plays an essential role in clinical decision-making.
We propose a novel framework to combine the inheritance-guided hierarchical assignment and co-occurrence graph propagation for clinical automatic diagnosis.
arXiv Detail & Related papers (2021-01-27T13:16:51Z) - Classification supporting COVID-19 diagnostics based on patient survey
data [82.41449972618423]
logistic regression and XGBoost classifiers, that allow for effective screening of patients for COVID-19 were generated.
The obtained classification models provided the basis for the DECODE service (decode.polsl.pl), which can serve as support in screening patients with COVID-19 disease.
This data set consists of more than 3,000 examples is based on questionnaires collected at a hospital in Poland.
arXiv Detail & Related papers (2020-11-24T17:44:01Z) - Multi-stage transfer learning for lung segmentation using portable X-ray
devices for patients with COVID-19 [14.767716319266999]
We propose a methodology that allows to adapt the knowledge from a well-known domain with a high number of samples to a new domain with a significantly reduced number and greater complexity.
We took advantage of a pre-trained segmentation model from brain magnetic resonance imaging of an unrelated pathology to obtain a robust system able to segment lung regions from portable X-ray devices.
arXiv Detail & Related papers (2020-10-30T22:51:06Z) - Proposing a two-step Decision Support System (TPIS) based on Stacked
ensemble classifier for early and low cost (step-1) and final (step-2)
differential diagnosis of Mycobacterium Tuberculosis from non-tuberculosis
Pneumonia [3.5128547933798275]
Mycobacterium Tuberculosis (TB) is an infectious bacterial disease presenting similar symptoms to pneumonia.
In this study, a two-step decision support system named TPIS is proposed for differential diagnosis of TB from pneumonia.
arXiv Detail & Related papers (2020-09-04T17:47:41Z)
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.