Cheng, J.-Z.J.-Z.ChengChen, K.-W.K.-W.ChenChou, Y.-H.Y.-H.ChouCHUNG-MING CHEN2020-02-262020-02-262008https://scholars.lib.ntu.edu.tw/handle/123456789/463850This study proposes a nearly automatic ultrasound image segmentation algorithm for computer-aided diagnosis on breast cancer. This method is realized in two phases, i.e., partition phase and edge grouping phase. The two phases are implemented on the cell tessellation, which is generated by two-pass watershed transformation. With this unique integration of the three ingredients, i.e., the partition and grouping phases and cell tessellation, it will be shown that the breast lesion boundaries can be effectively and efficiently detected - even the lesion shape is very uneven. The proposed algorithm can be served as the kernel of CAD system on breast ultrasound to improve the automation and performance.Breast cancer; Computer-aided diagnosis; Image segmentation; Ultrasound[SDGs]SDG3Computer aided diagnosis; Image segmentation; Oncology; Breast cancer; Grouping phases; Ultrasonic imagingCell-based image partition and edge grouping: A nearly automatic ultrasound image segmentation algorithm for breast cancer computer aided diagnosisconference paper10.1117/12.7699952-s2.0-44349103519https://www.scopus.com/inward/record.uri?eid=2-s2.0-44349103519&doi=10.1117%2f12.769995&partnerID=40&md5=723b946996aa63d24a68b329c211210f