Comparison of conventional statistical methods with machine learning in medicine: Diagnosis, drug development, and treatment

Hema Sekhar Reddy Rajula, Giuseppe Verlato, Mirko Manchia, Nadia Antonucci, Vassilios Fanos

Producción científica: Contribución a una revistaArtículorevisión exhaustiva

326 Citas (Scopus)

Resumen

Futurists have anticipated that novel autonomous technologies, embedded with machine learning (ML), will substantially influence healthcare. ML is focused on making predictions as accurate as possible, while traditional statistical models are aimed at inferring relationships between variables. The benefits of ML comprise flexibility and scalability compared with conventional statistical approaches, which makes it deployable for several tasks, such as diagnosis and classification, and survival predictions. However, much of ML-based analysis remains scattered, lacking a cohesive structure. There is a need to evaluate and compare the performance of well-developed conventional statistical methods and ML on patient outcomes, such as survival, response to treatment, and patient-reported outcomes (PROs). In this article, we compare the usefulness and limitations of traditional statistical methods and ML, when applied to the medical field. Traditional statistical methods seem to be more useful when the number of cases largely exceeds the number of variables under study and a priori knowledge on the topic under study is substantial such as in public health. ML could be more suited in highly innovative fields with a huge bulk of data, such as omics, radiodiagnostics, drug development, and personalized treatment. Integration of the two approaches should be preferred over a unidirectional choice of either approach.

Idioma originalEnglish
Número de artículo455
Páginas (desde-hasta)1-10
Número de páginas10
PublicaciónMedicina (Lithuania)
Volumen56
N.º9
DOI
EstadoPublished - sep. 2020

Nota bibliográfica

Funding Information:
Funding: This research was funded by the European Union’s Horizon 2020 research and innovation program under the Marie Skłodowska-Curie Grant Agreement No. 721567, CAPICE project-Childhood and Adolescence Psychopathology: unravelling the complex aetiology by a large Interdisciplinary Collaboration in Europe under Grant Agreement 721567.

Publisher Copyright:
© 2020 by the authors. Licensee MDPI, Basel, Switzerland.

ASJC Scopus Subject Areas

  • General Medicine

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