Learning to segmentation without large-scale samples is an inherent
capability of human. Recently, Segment Anything Model (SAM) performs the
significant zero-shot image segmentation, attracting considerable attention
from the computer vision community. Here, we investigate the capability of SAM
for medical image analysis, especially for multi-phase liver tumor segmentation
(MPLiTS), in terms of prompts, data resolution, phases. Experimental results
demonstrate that there might be a large gap between SAM and expected
performance. Fortunately, the qualitative results show that SAM is a powerful
annotation tool for the community of interactive medical image segmentation.Comment: Preliminary investigatio