“…change of size, shape and location of tumours), 86,119,144,145,152–154,157 which conventional augmentation methods generally do not account for. Sometimes, geometric, deformable and intensity‐based augmentation can also be applied to the data used to train the DL‐based augmentation networks 56,91,101,138,146,152,154 or used alongside the DL‐based methods 53,83,86,87,100,119 . The majority of DL‐based augmentation approaches are based on adversarial training (including GAN‐based and other adversarial learning networks), where a discriminator network is usually used to review the generated images, and the training process iteratively bridges the gap between generated and real images.…”