Copyright
©The Author(s) 2021.
Artif Intell Gastroenterol. Jun 28, 2021; 2(3): 77-84
Published online Jun 28, 2021. doi: 10.35712/aig.v2.i3.77
Published online Jun 28, 2021. doi: 10.35712/aig.v2.i3.77
Criteria | Biophysics inspired machine learning | Deep learning |
Principle | Identification of discriminating features within data set prior to system training based on already proven biophysical properties | Discriminating features/patterns in data discovered through analysis of large databanks |
Training corpus for system to accurately assess unseen cases | Small to moderate data cohorts | Large training data corpuses required |
Explainability | Settings, e.g., parameter description and number, used in algorithms are easily described | Complex algorithms utilizing numerous parameters and hyperparameters to control the learning process mean such algorithms often poorly understood |
Interpretability | Conclusions reached are easily appreciated and can be explained logically by an appropriately trained individual | Human comprehension of sophisticated algorithm predictions/results may be difficult (including for experts in the field) |
Generalizability | Accurate extrapolation of results to unseen cases as well as adaptation of such systems to other similar uses | High degree of specialization within DL systems makes adaptation to other similar uses difficult |
Bias | Well described, transparent and biophysics-based features help reduce or identify bias within such systems | Bias within training datasets may be perpetuated by DL systems through subtle mechanisms that may even be imperceptible to humans |
- Citation: Hardy NP, Dalli J, Mac Aonghusa P, Neary PM, Cahill RA. Biophysics inspired artificial intelligence for colorectal cancer characterization. Artif Intell Gastroenterol 2021; 2(3): 77-84
- URL: https://www.wjgnet.com/2644-3236/full/v2/i3/77.htm
- DOI: https://dx.doi.org/10.35712/aig.v2.i3.77