Machine Learning–Assisted Decision Making in Orthopaedic Oncology

Author:

Rizk Paul A.1ORCID,Gonzalez Marcos R.1ORCID,Galoaa Bishoy M.2ORCID,Girgis Andrew G.3ORCID,Van Der Linden Lotte1ORCID,Chang Connie Y.4ORCID,Lozano-Calderon Santiago A.1ORCID

Affiliation:

1. Division of Orthopaedic Oncology, Department of Orthopaedic Surgery, Massachusetts General Hospital, Harvard Medical School, Boston, Massachusetts

2. Interdisciplinary Science & Engineering Complex (ISEC), Northeastern University, Boston, Massachusetts

3. Boston University Chobanian & Avedisian School of Medicine, Boston, Massachusetts

4. Musculoskeletal Imaging and Intervention, Department of Radiology, Massachusetts General Hospital and Harvard Medical School, Boston, Massachusetts

Abstract

» Artificial intelligence is an umbrella term for computational calculations that are designed to mimic human intelligence and problem-solving capabilities, although in the future, this may become an incomplete definition. Machine learning (ML) encompasses the development of algorithms or predictive models that generate outputs without explicit instructions, assisting in clinical predictions based on large data sets. Deep learning is a subset of ML that utilizes layers of networks that use various inter-relational connections to define and generalize data.» ML algorithms can enhance radiomics techniques for improved image evaluation and diagnosis. While ML shows promise with the advent of radiomics, there are still obstacles to overcome.» Several calculators leveraging ML algorithms have been developed to predict survival in primary sarcomas and metastatic bone disease utilizing patient-specific data. While these models often report exceptionally accurate performance, it is crucial to evaluate their robustness using standardized guidelines.» While increased computing power suggests continuous improvement of ML algorithms, these advancements must be balanced against challenges such as diversifying data, addressing ethical concerns, and enhancing model interpretability.

Publisher

Ovid Technologies (Wolters Kluwer Health)

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