| Literature DB >> 34410512 |
Inés Robles Mendo1, Gonçalo Marques1,2, Isabel de la Torre Díez3, Miguel López-Coronado1, Francisco Martín-Rodríguez4.
Abstract
Despite the increasing demand for artificial intelligence research in medicine, the functionalities of his methods in health emergency remain unclear. Therefore, the authors have conducted this systematic review and a global overview study which aims to identify, analyse, and evaluate the research available on different platforms, and its implementations in healthcare emergencies. The methodology applied for the identification and selection of the scientific studies and the different applications consist of two methods. On the one hand, the PRISMA methodology was carried out in Google Scholar, IEEE Xplore, PubMed ScienceDirect, and Scopus. On the other hand, a review of commercial applications found in the best-known commercial platforms (Android and iOS). A total of 20 studies were included in this review. Most of the included studies were of clinical decisions (n = 4, 20%) or medical services or emergency services (n = 4, 20%). Only 2 were focused on m-health (n = 2, 10%). On the other hand, 12 apps were chosen for full testing on different devices. These apps dealt with pre-hospital medical care (n = 3, 25%) or clinical decision support (n = 3, 25%). In total, half of these apps are based on machine learning based on natural language processing. Machine learning is increasingly applicable to healthcare and offers solutions to improve the efficiency and quality of healthcare. With the emergence of mobile health devices and applications that can use data and assess a patient's real-time health, machine learning is a growing trend in the healthcare industry.Entities:
Keywords: Emergency medicine; Health emergencies; Machine learning; Mobile applications
Mesh:
Year: 2021 PMID: 34410512 PMCID: PMC8374032 DOI: 10.1007/s10916-021-01762-3
Source DB: PubMed Journal: J Med Syst ISSN: 0148-5598 Impact factor: 4.460
Fig. 1Growth of IA-related articles between 1998 and 2019 [7]
Fig. 10Schematically the procedure used in the search strategy (literature)
Fig. 11Schematically the procedure used in the search strategy (mobile apps)
Number of results obtained in search engines
| Academic Search Systems | Search terms | Search filtering |
|---|---|---|
| Google Scholar | +1.600.000 | 29 |
| IEEE Xplore | 126.218 | 579 |
| PubMed | 269.704 | 41 |
| Science Direct | 2.061 | 320 |
| Scopus | 365 | 34 |
Fig. 2Numeric flow diagram of the PRISMA-ScR protocol algorithm
Fig. 3Number of results in the literature review search
Fig. 4Number of articles published in the last 10 years
Categorization of literature
| Group | Total | References | Percentage |
|---|---|---|---|
| Pre-hospital medical care and disease screening | 3 | [ | 15% |
| Clinical decisions | 4 | [ | 20% |
| COVID-19 screening, and management | 3 | [ | 15% |
| Emergency medicine (EM) | 3 | [ | 15% |
| Medical services and/or emergency services | 4 | [ | 20% |
| M-Health | 2 | [ | 10% |
| Others | 1 | [ | 5% |
Fig. 5Categorization of literature in groups according to the content covered
Characteristics of the selected items
| Title and date | Author(s) | Main Contribution | Category |
|---|---|---|---|
An accurate and dynamic predictive model for a smart M-Health system using machine learning [ October 2020 | Naseer Qreshi K, Din S., & Jeon G | This model is divided into data collection, data pre-processing, data partitioning, learning algorithm and the decision making for which it has been trained | M-Health |
Applications of machine learning and artificial intelligence for Covid-19 (SARS-CoV-2) pandemic: A review [ October 2020 | Lalmuanawma, S., Hussain, J., & Chhakchhuak, L | This report reviews existing information on the application of ML and AI to address the COVID-19 pandemic | COVID-19 screening, and management |
Applications of Machine Learning Approaches in Emergency Medicine [ June 2019 | Shafaf N., & Malek H | This paper aims to compile and evaluate the existing studies in recent years on AI in EM, which can be categorised into different groups | Emergency medicine (EM) |
Architecture of Smart Health Care System Using Artificial Intelligence [ 2020 | Kamruzzaman M. M | It is concluded that AI- or ML-based healthcare offers a multitude of improvements for the health sector | Pre-hospital medical care and disease screening |
Artificial Intelligence and Machine Learning Applications in Musculoskeletal Imaging [ February 2019 | Enamandram S., Sandhu E., Bao H.Do, Reicher J., & Beaulieu CF | This article describes the key applications of supervised and unsupervised ML in musculoskeletal medicine. Such as diagnostic imaging, patient measurement data and clinical decision support | Others |
Artificial Intelligence and Machine Learning in Emergency Medicine [ July 2018 | Stewart, J., Sprivulis, P., & Dwivedi, G | This article studies and conducts a research analysis of AI and ML in EM Finally, it is emphasised that, despite limitations, AI and its subfields are very useful as they can solve problems in a wide range of clinical domains | Emergency medicine (EM) |
Artificial Intelligence for the Future Radiology Diagnostic Service [ January 2021 | Mun, S.K. Wong, K.H.,Lo, S.-C.B.,Li, Y., & Bayarsaikhan, S | In this chapter, artificial intelligence (AI) is explored along future lines in diagnostic radiology Three avenues are proposed for the important role of AI in radiology beyond current capabilities | Clinical decisions |
Automatic Clinical Procedure Detection for Emergency Services [ July 2019 | Heard, J., Paris, R. A., Scully, D., McNaughton, C., Ehrenfeld, J. M., Coco, J., Fabbri, D., Bodenheimer, B., & Adams, J. A | A system based on human activity recognition algorithms to accurately recognise clinical processes and send data of these processes without the presence of the physician is evaluated | Clinical decisions |
Classification of hospital admissions into emergency and elective care: a machine learning approach [ November 2017 | Krämer, J., Schreyögg, J., & Busse, R | This article focuses on the classification of hospital admissions in emergency care with a focus on ML | Medical services and/or emergency services |
Clinician involvement in research on machine learning-based predictive clinical decision support for the hospital setting [ March 2021 | Schwartz, J. M., Moy, A. J., Rossetti, S. C., Elhadad, N., & Cato, K. D | This article describes the involvement of clinicians in the development, evaluation and implementation of clinical decision support systems that use ML and analyse electronic medical record data to assist clinicians in their diagnosis and treatment, as well as in decision making | Clinical decisions |
Development, evaluation, and validation of machine learning models for COVID-19 detection based on routine blood tests [ October 2020 | Cabitza, F., Campagner, A.,Ferrari, D., Di Resta, C., Ceriotti, D., Sabetta, E., Colombini, A., De Vecchi, E., Banfi, G.,Locatelli, M., & Carobene, A | This paper studies the development and evaluation of machine learning models for the detection of COVID-19 based on blood tests The methodology carried out was to train 3 different datasets to develop different predictive models | COVID-19 screening, and management |
Fall Detection for Elderly People using Machine Learning [ July 2020 | Badgujar S., & Pillai AS | This paper presents a fall detection system based on wearable sensors that are suitable for elderly people | Medical services and/or emergency services |
IoT based healthcare monitoring system using 5G communication and Machine learning models [ January 2021 | Paramita, S., Bebartta, H. N. D., & Pattanayak, P | This smart system for patients by implanting wireless sensors in the body collects different vital aspects such as heart rate, blood pressure, etc | Pre-hospital medical care and disease screening |
Machine learning and artificial intelligence in the service of medicine: Necessity or potentiality? [ November 2020 | Alsuliman, T., Humaidan, D., & Sliman, L | This article arises because of the global trend towards digitisation of the healthcare system and how the need for it affects this area | Medical services and/or emergency services |
Machine Learning for Predicting Emergency Incidents that Need an Air-ambulance [ July 2020 | Nuntalid N., & Richards D | The main objective of this article is to develop a real-time report to help the emergency medical service improve patient outcomes | Medical services and/or emergency services |
Machine Learning-Based Early Warning Systems for Clinical Deterioration: Systematic Scoping Review [ February 2021 | Muralitharan, S., Nelson, W., Di, S., McGillion, M., Devereaux, P., Barr, N. G., & Petch, J | The results obtained in this article are based on a systematic scoping review following the PRISMA-ScR model and conclude that the impact on ML-based early warning systems could be significant for clinicians and patients because of the decrease in false alerts and the increase in early detection | Clinical decisions |
Machine Learning-based Risk of Hospital Readmissions: Predicting Acute Readmissions within 30 Days of Discharge [ 2019 | Baig, M. M., Hua, N., Zhang, E., Robinson, R., Armstrong, D., Whittaker, R., Robinson, T., Mirza, F., & Ullah, E | The proposed predictive model works better than other admission risk models. However, to further strengthen risk prediction and its clinical impact, the addition of non-clinical data such as social support is proposed as a future line of research | Pre-hospital medical care and disease screening |
Review on machine and deep learning models for the detection and prediction of Coronavirus [ June 2020 | Ahmad W., Salehi Preety B., & Gaurav G | Solutions are proposed through AI by performing a scoping review following the PRISMA-ScR model The research concludes that so far there is no effective drug for the treatment of patients with COVID-19, but early detection or prediction of coronavirus cases may be possible with these predictive models | COVID-19 screening, and management |
Role of machine learning in medical research: A survey [ May 2020 | Garg A., & Mago V | Different concepts of ML and DL and their possible medical application are studied and analysed | Emergency medicine (EM) |
SaveMe: A Crime Deterrent Personal Safety Android App with a Bluetooth Connected Hardware Switch [ August 2018 | Tripti, N. F., Farhad, A., Iqbal, W., & Zaman, H. U | This application consists of a switch connected to the smartphone via Bluetooth that is pressed to alert the emergency contact of the victim in question of danger | M-Health |
Fig. 6Number of apps published in the last 10 years
Categorization of apps
| Group | Total | References | Percentage |
|---|---|---|---|
| Pre-hospital medical care | 3 | [ | 25% |
| Applications for COVID-19 management | 2 | [ | 16.7% |
| Help with physical illness or disability | 2 | [ | 16.7% |
| Searching for clinical material and help among health personnel | 2 | [ | 16.7% |
| Clinical decisions | 3 | [ | 25% |
Fig. 7Categorization of apps
Fig. 8Histogram of ratings for each app
Categorization of techniques of apps
| Group | Total | References | Percentage |
|---|---|---|---|
| AI-based on evidence | 3 | [ | 25% |
| ML-based on natural language processing | 6 | [ | 50% |
| ML-based on visual processing | 2 | [ | 16.7% |
| ML-based on natural language processing + visual processing | 1 | [ | 8.3% |
Fig. 9Graph of app technology
Key features of App Store and Google Play apps
| Name of The App | Technique | User Type | Health Condition | Search Platform | Language(s) | App Registration? | Category |
|---|---|---|---|---|---|---|---|
| Asistencia COVID-19 [ | ML-based on natural language processing | Potential patients | COVID-19 | App Store and Google Play | 4, including Spanish and English | Yes | Applications for COVID-19 management |
| HealthTap [ | AI-based on evidence protocols | Potential patients | Diverse | App Store and Google Play | Spanish and English | Yes, in addition to paying a monthly fee | Pre-hospital medical care |
| MDCalc [ | ML-based on natural language processing | Health professional | Clinical decision | Google Play | English | Yes, in addition to paying a monthly fee | Clinical decisions |
| Mediktor [ | ML-based on natural language processing | Potential patients | Diverse | App Store and Google Play | 9, including Spanish and English | No | Pre-hospital medical care |
| Medit [ | ML-based on natural language processing | Health professional | Search for Clinical Material | App Store and Google Play | English | Yes | Searching for clinical material and help among health personnel |
| Nabta Health [ | AI-based on evidence protocols | Women patients | Diverse | App Store and Google Play | English and Arabic | Yes | Pre-hospital medical care |
| Redivus Health [ | AI-based on evidence protocols | Health professional | Diverse | App Store and Google Play | English | Yes | Clinical decisions |
| Seeing AI [ | ML-based on natural language processing + visual processing | Visually impaired patients | Vision loss | App Store | 16, including Spanish and English | No | Help with physical illness or disability |
| SkinApp [ | ML-based on visual processing | Health professional mainly dermatologists | Dermatology | App Store | French and English | Yes | Help with physical illness or disability |
Tidda ODEM [ | ML-based on natural language processing + visual processing | Health professional Potential patients | COVID-19 | App Store and Google Play | German and English | Yes | Applications for COVID-19 management |
Tok Medicine [ | ML-based on natural language processing | Health professional | Search for Clinical Material | App Store and Google Play | Spanish and English | Yes | Searching for clinical material and help among health personnel |
| + WoundDesk [ | ML-based on visual processing | Health professional Patients | Wound Care | Google Play | English | Yes | Clinical decisions |