As it depends on visual observations, these can be vary from person to person leading to different classifications based on different assessments, thus introducing bias.
Along with this human variation, there is also the challenge that although tumors can have similar histology, they can still progress in different ways, and so the other way around, where tumors with different microscopic characteristics can progress the same way.
In previous research studies (1, 2) for example, this inter-observer variability in histopathological diagnosis has been reported in Central Nervous System (CNS) tumors like diffuse gliomas (brain tumors initiating in a type of brain cells called glial cells), ependymomas ( brain tumors initiating in the ependymoma), and supratentorial primitive neuroectodermal tumors ( occurring mostly in children starting in the cerebrum).
To try to address this problem, some molecular groupings have been updated into the World Health Organization (WHO) classification, but at the time of this writing only for selected tumors such as medulloblastoma.
This diagnostic variation and uncertainty provide a challenge to decision-making in clinical practice that can have a major effect on the survival of a cancer patient.
Therefore, Capper and colleagues decided to train their machine learning algorithm focusing not on complex visual assessments, but on the most studied epigenetic event in cancer, DNA methylation.