Literature DB >> 30080689

Artificial Intelligence for Anesthesia: What the Practicing Clinician Needs to Know: More than Black Magic for the Art of the Dark.

Michael R Mathis1, Sachin Kheterpal, Kayvan Najarian.   

Abstract

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Year:  2018        PMID: 30080689      PMCID: PMC6148374          DOI: 10.1097/ALN.0000000000002384

Source DB:  PubMed          Journal:  Anesthesiology        ISSN: 0003-3022            Impact factor:   7.892


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Editorial

Machine learning, the quintessential tool currently driving forward the development of artificial intelligence, was discovered and developed decades ago. Nevertheless, only recently has machine learning seen an exponential increase in growth, sophistication, and influence. Recent success stories outside healthcare are numerous, including: in 2014 Facebook unveiled DeepFace, a machine learning technology capable of identifying faces with 97.25% accuracy (compared to human accuracy of 97.53%).[1] In 2016 Google adopted a deep learning approach to language translation, using an algorithm which is fed massive amounts of data to effectively train itself to recognize patterns in speech, with a reduction in translation errors by 87%.[2] Machine learning techniques like these may be coming soon to an operating room near you: in this issue, we explore three examples of machine learning applied to our field. These include works by Lee et al., using machine learning techniques to predict postoperative mortality from electronic health record data,[3] and works by Kendale et al., and Hatib et al., predicting hypotension through machine learning algorithms leveraging data available during induction of anesthesia[4] and high-fidelity arterial line waveforms,[5] respectively. Previously, in the March 2018 issue of Anesthesiology, Lee et al. used machine learning to predict bispectral index values produced by target-controlled infusions of propofol and remifentanil.[6] An accompanying editorial provided a valuable summary of the history of artificial intelligence and an introduction to machine learning, the component of artificial intelligence that allows computers to make what humans describe as intelligent choices and predictions.[7] Although disagreement exists whether artificial intelligence, as driven by machine learning algorithms, portends an optimistic or ominous future, it is indisputable that machine learning paradigms have gained widespread traction in every industry. Within the works featured in this issue, a rich underlying digital health dataset enabled the authors to leverage properties of machine learning to study old problems in new ways. These machine learning properties include an ability to capture numerous variables, better known as machine learning model features, which would otherwise elude human abilities to perceive or simultaneously consider (as is the case for the 2.6 million arterial waveform combinatorial features described by Hatib et al.). These also include the ability of machine learning to model complex relationships between model features which otherwise eclipse human understanding (as is the case for the deep neural network model described by Lee et al.). Although some “transparent” machine learning methods provide insight into associations discovered, machine learning predictive models by nature do not require human comprehension in order to work. An ensuing challenge for scientific progress over the next decade will be to create and enforce standards for evaluating these methods, so as not to supersede the ability of authors to explain, or readers to understand. Concurrent with the rise of Big Data has been a rise in the inconsistency and uncertainty of applying machine learning concepts to datasets. If not kept in check, spurious conclusions drawn from methodologically unsound studies threaten the credibility of this science. Answering this call to action, and importantly recognized by all three featured articles, are a set of multidisciplinary guidelines for developing and reporting machine learning predictive models in biomedical research – well worth the read.[8] Beyond a dire need for reporting standards in machine learning predictive models, it is of equal burden for practitioners to have a basic literacy of machine learning concepts in order to appraise machine learning-based investigations, much in the same way current biomedical literature demands a basic literacy of classical statistics and study design. These machine learning concepts include the use of training, testing, and validation datasets – used respectively to develop, assess internal performance, and externally validate machine learning algorithms (Figure 1). Additionally, just as clinicians are familiar with conventional statistical analyses such as logistic regression (which consequently, happens to be one simple type of algorithm supported by machine learning), it may behoove the perioperative clinician to be familiar with other machine learning techniques, including naïve Bayes, support vector machines, and random forests – to name a few; others are highlighted by Kendale et al. in this issue.
Figure 1

Information Flow in the Predictive Modelling Process for Machine Learning.

Adapted from Luo W, Phung D, Tran T, Luo W, Phung D, Tran T, Gupta S, Rana S, Karmakar C, Shilton A, Yearwood J, Dimitrova N, Ho TB, Venkatesh S, Berk M. Guidelines for Developing and Reporting Machine Learning Predictive Models in Biomedical Research: A Multidisciplinary View. Journal of medical Internet research. 2016;18(12):e323.

As demonstrated by the studies in this issue, the principal advantage of machine learning is the boost in performance it achieves when attempting to predict an observed outcome for which the range of explanatory features is large, or the depth of interactions between features is overwhelmingly complex. To predict hypotension, Hatib et al. brilliantly tap into vast arrays of data within the arterial line waveform, extending far beyond simple characteristics such as heart rate and blood pressure (and furthermore, far beyond “complex” characteristics such as pulse pressure variation, systolic pressure rise [dP/dt], and waveform area). When posed with an analytic task in which potential predictive features are in the thousands or millions or of nuanced complexity, the flexibility of machine learning techniques to accommodate inputs simply outmatch any traditional analytic method. In biomedical literature, other fields leveraging machine learning to tackle complex tasks include image processing (e.g. computer vision) of radiographic[9] or whole-slide pathology[10] images, as well as text analysis (natural language processing) of clinical notes.[11,12] In contrast, for predictive analytic tasks in which features remain countable, or relationships explainable, machine learning may still prove useful, but will likely be of more modest benefit. In the work by Kendale et al., an ensemble of machine learning methods indeed outperformed a classic logistic regression approach for predicting hypotension, but the overall performance of the machine learning model remained far from perfect. In the case of the best-performing algorithm (gradient boosting machines), Kendale et al. demonstrate a relatively small improvement compared to a classic logistic regression approach. Similarly, whereas Lee et al. successfully demonstrate a deep learning approach to predicting postoperative mortality from intraoperative data, the authors fail to demonstrate improvement compared to logistic regression, a recurring issue in studies promoting the use of deep learning. As with all methodological approaches, machine learning is not without drawbacks. The most hotly contested is the difficulty of understanding mechanisms driving the prediction models presented. Herein lies the “black magic” of machine learning: although the predictive performance of a machine learning algorithm can be precisely quantified – and sometimes, this performance is staggering – the question of how to interpret and act upon the information generated remains wholly unanswered. In cases where mechanisms are of limited concern, or penalties for incorrect predictions low – such as facial recognition in family photos – machine learning techniques deftly succeed in their purpose. Conversely, in cases where mechanisms are critical, and penalties for error are high – as is often the case in healthcare, and particularly in anesthesiology – a machine learning approach falling anywhere short of nearly perfect remains unviable. Hatib et al. importantly note that although prediction of hypotension can be established with high fidelity, it remains entirely unclear as to how a clinician should respond to such an alert. This issue is even more critical, considering the generalizability and reproducibility concerns of such models. In many studies leveraging machine learning, insufficient testing and validation of complex models – particularly those using deep learning – can lead to overfitting of even the largest of datasets. Despite such limitations, the work in this issue takes courageous shifts in methodologic approaches, and unmistakably establishes that machine learning applications to anesthesiology are not just a fad. The authors should be commended as exemplars for assertively applying new scientific paradigms to our field. How such machine learning techniques are harnessed in order to improve anesthesia, and more broadly advance health sciences, remains a challenge for decades to come.
  9 in total

1.  Prediction of Bispectral Index during Target-controlled Infusion of Propofol and Remifentanil: A Deep Learning Approach.

Authors:  Hyung-Chul Lee; Ho-Geol Ryu; Eun-Jin Chung; Chul-Woo Jung
Journal:  Anesthesiology       Date:  2018-03       Impact factor: 7.892

2.  Deep Learning at Chest Radiography: Automated Classification of Pulmonary Tuberculosis by Using Convolutional Neural Networks.

Authors:  Paras Lakhani; Baskaran Sundaram
Journal:  Radiology       Date:  2017-04-24       Impact factor: 11.105

3.  Automatic prediction of coronary artery disease from clinical narratives.

Authors:  Kevin Buchan; Michele Filannino; Özlem Uzuner
Journal:  J Biomed Inform       Date:  2017-06-27       Impact factor: 6.317

4.  Artificial Intelligence for Everyone.

Authors:  Pedro Gambus; Steven L Shafer
Journal:  Anesthesiology       Date:  2018-03       Impact factor: 7.892

5.  Diagnostic Assessment of Deep Learning Algorithms for Detection of Lymph Node Metastases in Women With Breast Cancer.

Authors:  Babak Ehteshami Bejnordi; Mitko Veta; Paul Johannes van Diest; Bram van Ginneken; Nico Karssemeijer; Geert Litjens; Jeroen A W M van der Laak; Meyke Hermsen; Quirine F Manson; Maschenka Balkenhol; Oscar Geessink; Nikolaos Stathonikos; Marcory Crf van Dijk; Peter Bult; Francisco Beca; Andrew H Beck; Dayong Wang; Aditya Khosla; Rishab Gargeya; Humayun Irshad; Aoxiao Zhong; Qi Dou; Quanzheng Li; Hao Chen; Huang-Jing Lin; Pheng-Ann Heng; Christian Haß; Elia Bruni; Quincy Wong; Ugur Halici; Mustafa Ümit Öner; Rengul Cetin-Atalay; Matt Berseth; Vitali Khvatkov; Alexei Vylegzhanin; Oren Kraus; Muhammad Shaban; Nasir Rajpoot; Ruqayya Awan; Korsuk Sirinukunwattana; Talha Qaiser; Yee-Wah Tsang; David Tellez; Jonas Annuscheit; Peter Hufnagl; Mira Valkonen; Kimmo Kartasalo; Leena Latonen; Pekka Ruusuvuori; Kaisa Liimatainen; Shadi Albarqouni; Bharti Mungal; Ami George; Stefanie Demirci; Nassir Navab; Seiryo Watanabe; Shigeto Seno; Yoichi Takenaka; Hideo Matsuda; Hady Ahmady Phoulady; Vassili Kovalev; Alexander Kalinovsky; Vitali Liauchuk; Gloria Bueno; M Milagro Fernandez-Carrobles; Ismael Serrano; Oscar Deniz; Daniel Racoceanu; Rui Venâncio
Journal:  JAMA       Date:  2017-12-12       Impact factor: 56.272

6.  Development and Validation of a Deep Neural Network Model for Prediction of Postoperative In-hospital Mortality.

Authors:  Christine K Lee; Ira Hofer; Eilon Gabel; Pierre Baldi; Maxime Cannesson
Journal:  Anesthesiology       Date:  2018-10       Impact factor: 7.892

7.  Supervised Machine-learning Predictive Analytics for Prediction of Postinduction Hypotension.

Authors:  Samir Kendale; Prathamesh Kulkarni; Andrew D Rosenberg; Jing Wang
Journal:  Anesthesiology       Date:  2018-10       Impact factor: 7.892

8.  Machine-learning Algorithm to Predict Hypotension Based on High-fidelity Arterial Pressure Waveform Analysis.

Authors:  Feras Hatib; Zhongping Jian; Sai Buddi; Christine Lee; Jos Settels; Karen Sibert; Joseph Rinehart; Maxime Cannesson
Journal:  Anesthesiology       Date:  2018-10       Impact factor: 7.892

9.  Guidelines for Developing and Reporting Machine Learning Predictive Models in Biomedical Research: A Multidisciplinary View.

Authors:  Wei Luo; Dinh Phung; Truyen Tran; Sunil Gupta; Santu Rana; Chandan Karmakar; Alistair Shilton; John Yearwood; Nevenka Dimitrova; Tu Bao Ho; Svetha Venkatesh; Michael Berk
Journal:  J Med Internet Res       Date:  2016-12-16       Impact factor: 5.428

  9 in total
  13 in total

1.  Evaluation of machine learning models as decision aids for anesthesiologists.

Authors:  Mihir Velagapudi; Akira A Nair; Wyndam Strodtbeck; David N Flynn; Keith Howell; Justin S Liberman; Joseph D Strunk; Mayumi Horibe; Ricky Harika; Ava Alamdari; Sheena Hembrador; Sowmya Kantamneni; Bala G Nair
Journal:  J Clin Monit Comput       Date:  2022-06-09       Impact factor: 2.502

2.  Development of a fertility risk calculator to predict individualized chance of ovarian failure after chemotherapy.

Authors:  Esther H Chung; Chaitanya R Acharya; Benjamin S Harris; Kelly S Acharya
Journal:  J Assist Reprod Genet       Date:  2021-09-08       Impact factor: 3.412

3.  Personalized Surgical Transfusion Risk Prediction Using Machine Learning to Guide Preoperative Type and Screen Orders.

Authors:  Sunny S Lou; Hanyang Liu; Chenyang Lu; Troy S Wildes; Bruce L Hall; Thomas Kannampallil
Journal:  Anesthesiology       Date:  2022-07-01       Impact factor: 8.986

Review 4.  Artificial intelligence in dermatology and healthcare: An overview.

Authors:  Varadraj Vasant Pai; Rohini Bhat Pai
Journal:  Indian J Dermatol Venereol Leprol       Date:  2021 [SEASON]       Impact factor: 2.545

Review 5.  Artificial Intelligence and technology in COVID Era: A narrative review.

Authors:  Vanita Ahuja; Lekshmi V Nair
Journal:  J Anaesthesiol Clin Pharmacol       Date:  2021-04-10

6.  Can a deep learning model based on intraoperative time-series monitoring data predict post-hysterectomy quality of recovery?

Authors:  Xu Zhao; Ke Liao; Wei Wang; Junmei Xu; Lingzhong Meng
Journal:  Perioper Med (Lond)       Date:  2021-04-06

Review 7.  Central Hypovolemia Detection During Environmental Stress-A Role for Artificial Intelligence?

Authors:  Björn J P van der Ster; Yu-Sok Kim; Berend E Westerhof; Johannes J van Lieshout
Journal:  Front Physiol       Date:  2021-12-15       Impact factor: 4.566

Review 8.  Artificial intelligence and anesthesia: A narrative review.

Authors:  Madhavi Singh; Gita Nath
Journal:  Saudi J Anaesth       Date:  2022-01-04

9.  Clinical Application of Artificial Intelligence: Auto-Discerning the Effectiveness of Lidocaine Concentration Levels in Osteosarcoma Femoral Tumor Segment Resection.

Authors:  Shuqin Ni; Xin Li; Xiuna Yi
Journal:  J Healthc Eng       Date:  2022-03-28       Impact factor: 2.682

10.  Machine Learning Algorithm Using Electronic Chart-Derived Data to Predict Delirium After Elderly Hip Fracture Surgeries: A Retrospective Case-Control Study.

Authors:  Hong Zhao; Jiaming You; Yuexing Peng; Yi Feng
Journal:  Front Surg       Date:  2021-07-13
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