Literature DB >> 31094727

An Introduction to Machine Learning for Clinicians.

Michael Rowe1.   

Abstract

The technology at the heart of the most innovative progress in health care artificial intelligence (AI) is in a subdomain called machine learning (ML), which describes the use of software algorithms to identify patterns in very large datasets. ML has driven much of the progress of health care AI over the past 5 years, demonstrating impressive results in clinical decision support, patient monitoring and coaching, surgical assistance, patient care, and systems management. Clinicians in the near future will find themselves working with information networks on a scale well beyond the capacity of human beings to grasp, thereby necessitating the use of intelligent machines to analyze and interpret the complex interactions between data, patients, and clinical decision makers. However, as this technology becomes more powerful, it also becomes less transparent, and algorithmic decisions are therefore progressively more opaque. This is problematic because computers will increasingly be asked for answers to clinical questions that have no single right answer and that are open-ended, subjective, and value laden. As ML continues to make important contributions in a variety of clinical domains, clinicians will need to have a deeper understanding of the design, implementation, and evaluation of ML to ensure that current health care is not overly influenced by the agenda of technology entrepreneurs and venture capitalists. The aim of this article is to provide a nontechnical introduction to the concept of ML in the context of health care, the challenges that arise, and the resulting implications for clinicians.

Entities:  

Year:  2019        PMID: 31094727     DOI: 10.1097/ACM.0000000000002792

Source DB:  PubMed          Journal:  Acad Med        ISSN: 1040-2446            Impact factor:   6.893


  12 in total

1.  Opioid use disorder research and the Council for the Advancement of Nursing Science priority areas.

Authors:  Patricia Eckardt; Donald Bailey; Holli A DeVon; Cynthia Dougherty; Pamela Ginex; Cheryl A Krause-Parello; Rita H Pickler; Therese S Richmond; Eleanor Rivera; Carol F Roye; Nancy Redeker
Journal:  Nurs Outlook       Date:  2020-04-09       Impact factor: 3.250

2.  Predicting Motor Responsiveness to Deep Brain Stimulation with Machine Learning.

Authors:  Kevin J Krause; Fenna Phibbs; Thomas Davis; Daniel Fabbri
Journal:  AMIA Annu Symp Proc       Date:  2022-02-21

3.  EASY-APP: An artificial intelligence model and application for early and easy prediction of severity in acute pancreatitis.

Authors:  Balázs Kui; József Pintér; Roland Molontay; Marcell Nagy; Nelli Farkas; Noémi Gede; Áron Vincze; Judit Bajor; Szilárd Gódi; József Czimmer; Imre Szabó; Anita Illés; Patrícia Sarlós; Roland Hágendorn; Gabriella Pár; Mária Papp; Zsuzsanna Vitális; György Kovács; Eszter Fehér; Ildikó Földi; Ferenc Izbéki; László Gajdán; Roland Fejes; Balázs Csaba Németh; Imola Török; Hunor Farkas; Artautas Mickevicius; Ville Sallinen; Shamil Galeev; Elena Ramírez-Maldonado; Andrea Párniczky; Bálint Erőss; Péter Jenő Hegyi; Katalin Márta; Szilárd Váncsa; Robert Sutton; Peter Szatmary; Diane Latawiec; Chris Halloran; Enrique de-Madaria; Elizabeth Pando; Piero Alberti; Maria José Gómez-Jurado; Alina Tantau; Andrea Szentesi; Péter Hegyi
Journal:  Clin Transl Med       Date:  2022-06

4.  Predicting the postoperative blood coagulation state of children with congenital heart disease by machine learning based on real-world data.

Authors:  Kai Guo; Xiaoyan Fu; Huimin Zhang; Mengjian Wang; Songlin Hong; Shuxuan Ma
Journal:  Transl Pediatr       Date:  2021-01

5.  Model-Based Reasoning of Clinical Diagnosis in Integrative Medicine: Real-World Methodological Study of Electronic Medical Records and Natural Language Processing Methods.

Authors:  Wenye Geng; Xuanfeng Qin; Tao Yang; Zhilei Cong; Zhuo Wang; Qing Kong; Zihui Tang; Lin Jiang
Journal:  JMIR Med Inform       Date:  2020-12-21

6.  An observational study to develop a scoring system and model to detect risk of hospital admission due to COVID-19.

Authors:  Zhe Chen; Nicholas W Russo; Matthew M Miller; Robert X Murphy; David B Burmeister
Journal:  J Am Coll Emerg Physicians Open       Date:  2021-03-31

7.  Machine learning models to predict length of stay and discharge destination in complex head and neck surgery.

Authors:  Khodayar Goshtasbi; Tyler M Yasaka; Mehdi Zandi-Toghani; Hamid R Djalilian; William B Armstrong; Tjoson Tjoa; Yarah M Haidar; Mehdi Abouzari
Journal:  Head Neck       Date:  2020-11-03       Impact factor: 3.147

8.  Autoencoder as a New Method for Maintaining Data Privacy While Analyzing Videos of Patients With Motor Dysfunction: Proof-of-Concept Study.

Authors:  Marcus D'Souza; Caspar E P Van Munster; Jonas F Dorn; Alexis Dorier; Christian P Kamm; Saskia Steinheimer; Frank Dahlke; Bernard M J Uitdehaag; Ludwig Kappos; Matthew Johnson
Journal:  J Med Internet Res       Date:  2020-05-08       Impact factor: 5.428

9.  Applications of Machine Learning Using Electronic Medical Records in Spine Surgery.

Authors:  John T Schwartz; Michael Gao; Eric A Geng; Kush S Mody; Christopher M Mikhail; Samuel K Cho
Journal:  Neurospine       Date:  2019-12-31

10.  Personalized prediction of mode of cardiac death in heart failure using supervised machine learning in the context of cardiac innervation imaging.

Authors:  Rudolf A Werner; Thorsten Derlin; Frank M Bengel
Journal:  J Nucl Cardiol       Date:  2020-06-17       Impact factor: 5.952

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