| Literature DB >> 31963480 |
Mariana Chumbita1,2, Catia Cillóniz2,3,4, Pedro Puerta-Alcalde1,2, Estela Moreno-García1,2, Gemma Sanjuan1,2, Nicole Garcia-Pouton1,2, Alex Soriano1,2,4, Antoni Torres2,3,4, Carolina Garcia-Vidal1,2,4.
Abstract
The use of artificial intelligence (AI) to support clinical medical decisions is a rather promising concept. There are two important factors that have driven these advances: the availability of data from electronic health records (EHR) and progress made in computational performance. These two concepts are interrelated with respect to complex mathematical functions such as machine learning (ML) or neural networks (NN). Indeed, some published articles have already demonstrated the potential of these approaches in medicine. When considering the diagnosis and management of pneumonia, the use of AI and chest X-ray (CXR) images primarily have been indicative of early diagnosis, prompt antimicrobial therapy, and ultimately, better prognosis. Coupled with this is the growing research involving empirical therapy and mortality prediction, too. Maximizing the power of NN, the majority of studies have reported high accuracy rates in their predictions. As AI can handle large amounts of data and execute mathematical functions such as machine learning and neural networks, AI can be revolutionary in supporting the clinical decision-making processes. In this review, we describe and discuss the most relevant studies of AI in pneumonia.Entities:
Keywords: artificial intelligence; pneumonia
Year: 2020 PMID: 31963480 PMCID: PMC7019351 DOI: 10.3390/jcm9010248
Source DB: PubMed Journal: J Clin Med ISSN: 2077-0383 Impact factor: 4.241
Figure 1Time-Line of Artificial Intelligence.
Recently published AI approaches being undertaken to support clinical decision-making processes in pneumonia.
| Reference | Kermany et al. [ | Stephen et al. [ | Heckerling et al. [ | Hwang et al. [ |
|---|---|---|---|---|
| Main Goal | Detect pneumonia and distinguish viral and bacterial etiology | To handle pneumonia classification | Predict the presence of pneumonia among patients with acute respiratory complaints | Make a deep learning–based algorithm for major thoracic diseases; |
| Applied Method | Neural network | Neural network and augmentation methods to artificially increase the size and quality of the dataset | Neural networks | Deep learning—neural networks |
| N° | 5232 chest X-ray for training phase and 624 images for test phase | 5856 X-ray images—3722 training set and 2134 to the validation set--- | 1023 patients–training cohort of 907 and a testing cohort of 116 | 54,221 X-ray with normal finding—41140 with abnormal findings |
| Results | Detect pneumonia = accuracy of 92.8% | Training accuracy = 0.9531 validation accuracy of 0.9373 | Training cohort = sensitivity of 0.842 specificity of 0.593 testing cohort = sensitivity of 0.829 specificity of 0.547 | Image-wise classification: in-house = AUROC of 0.965 and external validation = AUROC of 0.979 |
Abbreviations: AUROC: area under the receiver operating characteristic curve; AUAFROC: area under the alternative free-response receiver operating characteristic curve; DLAD: Deep learning–based automatic detection algorithms.