Advances in and the Applicability of Machine Learning-Based Screening and Early Detection Approaches for Cancer: A Primer.
Leo BenningAndreas PeintnerLukas PeintnerPublished in: Cancers (2022)
Despite the efforts of the past decades, cancer is still among the key drivers of global mortality. To increase the detection rates, screening programs and other efforts to improve early detection were initiated to cover the populations at a particular risk for developing a specific malignant condition. These diagnostic approaches have, so far, mostly relied on conventional diagnostic methods and have made little use of the vast amounts of clinical and diagnostic data that are routinely being collected along the diagnostic pathway. Practitioners have lacked the tools to handle this ever-increasing flood of data. Only recently, the clinical field has opened up more for the opportunities that come with the systematic utilisation of high-dimensional computational data analysis. We aim to introduce the reader to the theoretical background of machine learning (ML) and elaborate on the established and potential use cases of ML algorithms in screening and early detection. Furthermore, we assess and comment on the relevant challenges and misconceptions of the applicability of ML-based diagnostic approaches. Lastly, we emphasise the need for a clear regulatory framework to responsibly introduce ML-based diagnostics in clinical practice and routine care.
Keyphrases
- machine learning
- data analysis
- clinical practice
- big data
- papillary thyroid
- quality improvement
- artificial intelligence
- healthcare
- primary care
- public health
- type diabetes
- transcription factor
- squamous cell carcinoma
- cardiovascular disease
- cardiovascular events
- pain management
- risk factors
- lymph node metastasis
- loop mediated isothermal amplification
- childhood cancer