Literature DB >> 32835197

Machine learning for COVID-19-asking the right questions.

Patrik Bachtiger1, Nicholas S Peters1, Simon Lf Walsh2.   

Abstract

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Year:  2020        PMID: 32835197      PMCID: PMC7351424          DOI: 10.1016/S2589-7500(20)30162-X

Source DB:  PubMed          Journal:  Lancet Digit Health        ISSN: 2589-7500


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COVID-19, caused by the novel severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), has put health-care systems worldwide into crisis. The speed with which health-care resources have been consumed has in some countries exceeded supply of personal protective equipment and ventilators, the unprecedented need for the latter as a result of life-threatening respiratory failure that characterises severe disease. Among the principal diagnostic imaging modalities, both chest x-ray and CT have quickly produced a large amount of data on COVID-19, enabling the development of machine learning algorithms, a form of artificial intelligence (AI). Well before the COVID-19 pandemic, enthusiasm around machine learning-based technology in medical imaging had notably increased. Now, huge datasets emerging from China, and increasingly from European countries, have generated numerous publications reporting AI applications in COVID-19. What remains to be seen is how many of these applications will prove to be clinically useful. The first step to achieving this goal is to define the clinical need for which a solution will improve or transform clinical care. The danger is that without expert clinical oversight, applied AI research might result in solutions' looking for problems: a form of supply trying to find demand, rather than the other way around. Although AI-based medical imaging research is published frequently, the number of systems validated in clinical trials and implemented in clinical practice is comparatively small. Google Deepmind's collaboration with Moorfields Eye Hospital (London, UK) might be considered a prototypical example of expert clinical oversight driving technical innovation, where a high accuracy, automated solution to analyse optical coherence tomography retinal scans was developed to address the huge volume of scans done globally each year. Similar, problem-focused applications of machine learning are now being implemented in the National Health Service, UK, including Microsoft's InnerEye technology for radiotherapy planning to save time and Heart Flow's machine-learning tool for 3D coronary modelling from cardiac CT, which provides decision support to clinicians assessing a patient's need for coronary angiography. However, for COVID-19, research questions risk focusing too much on generating novel machine learning models without fully considering its practical application and potential biases. Occasionally the speed and accuracy of machine learning algorithms are reported on the basis of performance in clinical scenarios that do not accurately reflect clinical practice. Sometimes comparisons between algorithm and human performance are unbalanced. In most cases a computer has been trained to detect a specific abnormality (eg, COVID-19-related parenchymal disease), whereas a radiologist is usually responsible for detecting any abnormality (including incidental findings such as pulmonary nodules or pulmonary emboli). Machine learning-based CT analysis has also been suggested as a promising screening tool for COVID-19, and in at least one study outperformed viral real-time PCR testing. However, these results need to be interpreted cautiously. Studies done during a pandemic are inherently hampered by artificially high disease prevalence and the selected nature of participants, whose disease severity warranted hospital admission and CT evaluation. Ideally, algorithms need to be trained on the full spectrum of disease, including asymptomatic and early-stage cases, if CT interpretation by machine learning can be applied to real-world data with confidence. Furthermore, a consensus must be reached on what the best data labelling strategy might be: are only patients with positive real-time PCR considered to be infected with SARS-CoV-2? Should data labelling incorporate multidisciplinary information such as the presence of a cough or fever? How does a study participant's exposure to an infected relative or household member alter algorithm training? In most cases, machine learning algorithms will be developed on retrospective, clinically indicated data that are often imperfect. However, rather than invalidate model training, incorporating all the statistical noise associated with real-world clinical data in model training might improve an algorithm's clinical applicability. Undoubtedly, COVID-19 offers many exciting opportunities for applied AI research. But research questions must be prioritised according to their probable clinical effect. As we learn more about the natural history of COVID-19, it has become apparent that the disease progresses in stages. The need to pre-empt deterioration and personalise preventative interventions have emerged as a priority. Currently, imaging research has focused on diagnosis on the basis of appearances once the disease has progressed. Detection of disease at the earliest stages, when initiation of appropriate therapy is likely to be most effective, would be more useful. CT also has a well established role as a prognostic tool in many diffuse lung diseases, particularly when combined with clinical data. This finding is of importance in COVID-19; given that a primary concern for health-care providers is becoming overwhelmed by patients requiring intensive care and ventilatory support, accurate prognostication is arguably a more pressing clinical problem than diagnosis. For COVID-19, training an algorithm to predict outcomes such as mortality, intensive care unit admission, or need for mechanical ventilation could have considerable clinical effect.8, 9, 10 An untapped resource in patients with COVID-19 is the availability of chest x-rays at multiple time points early in a patient's disease. In other respiratory disorders, short-term disease behaviour is the strongest predictor of long-term outcome. By incorporating sequential chest x-rays into model training, novel imaging features of progressive disease, including features inaccessible to the human eye, might be disclosed. More generally, although patients with comorbid conditions represent a population at high clinical risk, it is currently not possible to identify patients with no underlying health issues but who are also likely to develop progressive disease. The availability of objective stratification tools to rapidly assess a patient would assist frontline health-care workers in making difficult decisions about the allocation of scarce resources. If the history of pandemics is any guide, moments of crises can accelerate innovation, in part by creating permissive environments for collaboration. The COVID-19 pandemic is no different, as shown by the rapid setup of responses, such as the Imaging COVID-19 AI initiative, a multi-centre European project for pooling CT images across vast and diverse populations to power machine learning research. However, the starting point for this project has again focused largely on diagnosis; reorienting research questions towards pressing clinical problems including outcome prediction, with use of baseline or short-term data, might be more fruitful. Machine learning algorithms are often modular, meaning that new algorithms generated during this pandemic might be successfully repurposed for other pulmonary diseases in the future. Lastly, balancing light-touch regulation—as has increasingly been the position advocated by governments—with robust ethical standards is essential to build an environment that enables rapid review and appropriate ethical approval. However, we must avoid rushing through unproven solutions in response to the COVID-19 pandemic. As always, there will be a balance of risk and rapidity, and the key to optimising this balance is to define the needs for which solutions will have the greatest clinical value. With the right collaboration between clinical and machine learning expertise, the current public health crisis might mark the beginning of a decade when AI in health care delivers on its promises of wide, transformative clinical impact.
  10 in total

1.  An integrated clinicoradiological staging system for pulmonary sarcoidosis: a case-cohort study.

Authors:  Simon Lf Walsh; Athol U Wells; Nicola Sverzellati; Gregory J Keir; Lucio Calandriello; Katerina M Antoniou; Susan J Copley; Anand Devaraj; Toby M Maher; Elizabetta Renzoni; Andrew G Nicholson; David M Hansell
Journal:  Lancet Respir Med       Date:  2014-01-15       Impact factor: 30.700

2.  Covid-19: how doctors and healthcare systems are tackling coronavirus worldwide.

Authors:  Janice Hopkins Tanne; Erika Hayasaki; Mark Zastrow; Priyanka Pulla; Paul Smith; Acer Garcia Rada
Journal:  BMJ       Date:  2020-03-18

3.  1-Year Outcomes of FFRCT-Guided Care in Patients With Suspected Coronary Disease: The PLATFORM Study.

Authors:  Pamela S Douglas; Bernard De Bruyne; Gianluca Pontone; Manesh R Patel; Bjarne L Norgaard; Robert A Byrne; Nick Curzen; Ian Purcell; Matthias Gutberlet; Gilles Rioufol; Ulrich Hink; Herwig Walter Schuchlenz; Gudrun Feuchtner; Martine Gilard; Daniele Andreini; Jesper M Jensen; Martin Hadamitzky; Karen Chiswell; Derek Cyr; Alan Wilk; Furong Wang; Campbell Rogers; Mark A Hlatky
Journal:  J Am Coll Cardiol       Date:  2016-08-02       Impact factor: 24.094

Review 4.  Do no harm: a roadmap for responsible machine learning for health care.

Authors:  Jenna Wiens; Suchi Saria; Anna Goldenberg; Mark Sendak; Marzyeh Ghassemi; Vincent X Liu; Finale Doshi-Velez; Kenneth Jung; Katherine Heller; David Kale; Mohammed Saeed; Pilar N Ossorio; Sonoo Thadaney-Israni
Journal:  Nat Med       Date:  2019-08-19       Impact factor: 53.440

5.  Well-aerated Lung on Admitting Chest CT to Predict Adverse Outcome in COVID-19 Pneumonia.

Authors:  Davide Colombi; Flavio C Bodini; Marcello Petrini; Gabriele Maffi; Nicola Morelli; Gianluca Milanese; Mario Silva; Nicola Sverzellati; Emanuele Michieletti
Journal:  Radiology       Date:  2020-04-17       Impact factor: 11.105

6.  Highly accurate model for prediction of lung nodule malignancy with CT scans.

Authors:  Jason L Causey; Junyu Zhang; Shiqian Ma; Bo Jiang; Jake A Qualls; David G Politte; Fred Prior; Shuzhong Zhang; Xiuzhen Huang
Journal:  Sci Rep       Date:  2018-06-18       Impact factor: 4.379

Review 7.  Intensive care management of coronavirus disease 2019 (COVID-19): challenges and recommendations.

Authors:  Jason Phua; Li Weng; Lowell Ling; Moritoki Egi; Chae-Man Lim; Jigeeshu Vasishtha Divatia; Babu Raja Shrestha; Yaseen M Arabi; Jensen Ng; Charles D Gomersall; Masaji Nishimura; Younsuck Koh; Bin Du
Journal:  Lancet Respir Med       Date:  2020-04-06       Impact factor: 30.700

8.  Clinically applicable deep learning for diagnosis and referral in retinal disease.

Authors:  Jeffrey De Fauw; Joseph R Ledsam; Bernardino Romera-Paredes; Stanislav Nikolov; Nenad Tomasev; Sam Blackwell; Harry Askham; Xavier Glorot; Brendan O'Donoghue; Daniel Visentin; George van den Driessche; Balaji Lakshminarayanan; Clemens Meyer; Faith Mackinder; Simon Bouton; Kareem Ayoub; Reena Chopra; Dominic King; Alan Karthikesalingam; Cían O Hughes; Rosalind Raine; Julian Hughes; Dawn A Sim; Catherine Egan; Adnan Tufail; Hugh Montgomery; Demis Hassabis; Geraint Rees; Trevor Back; Peng T Khaw; Mustafa Suleyman; Julien Cornebise; Pearse A Keane; Olaf Ronneberger
Journal:  Nat Med       Date:  2018-08-13       Impact factor: 53.440

9.  Using Artificial Intelligence to Detect COVID-19 and Community-acquired Pneumonia Based on Pulmonary CT: Evaluation of the Diagnostic Accuracy.

Authors:  Lin Li; Lixin Qin; Zeguo Xu; Youbing Yin; Xin Wang; Bin Kong; Junjie Bai; Yi Lu; Zhenghan Fang; Qi Song; Kunlin Cao; Daliang Liu; Guisheng Wang; Qizhong Xu; Xisheng Fang; Shiqin Zhang; Juan Xia; Jun Xia
Journal:  Radiology       Date:  2020-03-19       Impact factor: 11.105

10.  Clinical course and mortality risk of severe COVID-19.

Authors:  Paul Weiss; David R Murdoch
Journal:  Lancet       Date:  2020-03-17       Impact factor: 79.321

  10 in total
  12 in total

1.  A Novel Method to Improve the Identification of Time of Intubation for Retrospective EHR Data Analysis During a Time of Resource Strain, the COVID-19 Pandemic.

Authors:  Alexander Makhnevich; Amir Gandomi; Yiduo Wu; Michael Qiu; Daniel Jafari; Daniel Rolston; Adey Tsegaye; Negin Hajizadeh
Journal:  Am J Med Qual       Date:  2022-03-11       Impact factor: 1.200

Review 2.  A contemporary review on the important role of in silico approaches for managing different aspects of COVID-19 crisis.

Authors:  Mohammad Moradi; Reza Golmohammadi; Ali Najafi; Mehrdad Moosazadeh Moghaddam; Mahdi Fasihi-Ramandi; Reza Mirnejad
Journal:  Inform Med Unlocked       Date:  2022-01-21

3.  Stacking Ensemble-Based Intelligent Machine Learning Model for Predicting Post-COVID-19 Complications.

Authors:  Aditya Gupta; Vibha Jain; Amritpal Singh
Journal:  New Gener Comput       Date:  2021-12-14       Impact factor: 1.180

4.  A machine learning approach for identification of gastrointestinal predictors for the risk of COVID-19 related hospitalization.

Authors:  Peter Lipták; Peter Banovcin; Róbert Rosoľanka; Michal Prokopič; Ivan Kocan; Ivana Žiačiková; Peter Uhrik; Marian Grendar; Rudolf Hyrdel
Journal:  PeerJ       Date:  2022-03-21       Impact factor: 2.984

Review 5.  COVID-19 Diagnosis: A Review of Rapid Antigen, RT-PCR and Artificial Intelligence Methods.

Authors:  Raphael Taiwo Aruleba; Tayo Alex Adekiya; Nimibofa Ayawei; George Obaido; Kehinde Aruleba; Ibomoiye Domor Mienye; Idowu Aruleba; Blessing Ogbuokiri
Journal:  Bioengineering (Basel)       Date:  2022-04-03

6.  The year in cardiovascular medicine 2020: digital health and innovation.

Authors:  Charalambos Antoniades; Folkert W Asselbergs; Panos Vardas
Journal:  Eur Heart J       Date:  2021-02-14       Impact factor: 29.983

7.  Deep Learning-Based COVID-19 Pneumonia Classification Using Chest CT Images: Model Generalizability.

Authors:  Dan Nguyen; Fernando Kay; Jun Tan; Yulong Yan; Yee Seng Ng; Puneeth Iyengar; Ron Peshock; Steve Jiang
Journal:  Front Artif Intell       Date:  2021-06-29

8.  Predicting critical state after COVID-19 diagnosis: model development using a large US electronic health record dataset.

Authors:  Mike D Rinderknecht; Yannick Klopfenstein
Journal:  NPJ Digit Med       Date:  2021-07-20

9.  Artificial Intelligence-assisted chest X-ray assessment scheme for COVID-19.

Authors:  Krithika Rangarajan; Sumanyu Muku; Amit Kumar Garg; Pavan Gabra; Sujay Halkur Shankar; Neeraj Nischal; Kapil Dev Soni; Ashu Seith Bhalla; Anant Mohan; Pawan Tiwari; Sushma Bhatnagar; Raghav Bansal; Atin Kumar; Shivanand Gamanagati; Richa Aggarwal; Upendra Baitha; Ashutosh Biswas; Arvind Kumar; Pankaj Jorwal; A Shariff; Naveet Wig; Rajeshwari Subramanium; Anjan Trikha; Rajesh Malhotra; Randeep Guleria; Vinay Namboodiri; Subhashis Banerjee; Chetan Arora
Journal:  Eur Radiol       Date:  2021-01-20       Impact factor: 5.315

Review 10.  AI for COVID-19 Detection from Radiographs: Incisive Analysis of State of the Art Techniques, Key Challenges and Future Directions.

Authors:  R Karthik; R Menaka; M Hariharan; G S Kathiresan
Journal:  Ing Rech Biomed       Date:  2021-07-26
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