Automatic tip selection for microtubule dynamics quantification.

Conference proceedings : ... Annual International Conference of the IEEE Engineering in Medicine and Biology Society. IEEE Engineering in Medicine and Biology Society. Annual Conference(2010)

引用 0|浏览6
暂无评分
摘要
Microtubule (MT) dynamics quantification includes modeling of elongation, rapid shortening, and pauses. It indicates the effect of the cancer treatment drug paclitaxel because the drug causes MTs to bundle, which will in turn inhibit successful mitosis of cancerous cells. Thus, automatic MT dynamics analysis has been researched intensely because it allows for faster evaluation of potential cancer treatments and better understanding of drug effects on a cell. However, most current literatures still use manual initialization. In this work, we propose an automatic initialization algorithm that selects isolated and active tips for tracking. We use a Gaussian match filter to enhance the MT structures, and a novel technique called Pixel Nucleus Analysis (PNA) for isolated MT tip detection. To find dynamic tips, we applied a masked FFT in the temporal domain followed by K-means clustering. To evaluate the selected tips, we used a low level tip linking algorithm, and show the results of applying the algorithm to a model image and five MCF-7 breast cancer cell line images captured using fluorescent confocal microscopy. Finally, we compare tip selection criteria with existing automatic selection algorithms. We conclude that the proposed analysis is an effective technique based on three criteria which include outer region selection, separation, and MT dynamics.
更多
查看译文
关键词
mcf-7 breast cancer cell line images,paclitaxel,matched filters,cellular biophysics,pattern clustering,cancerous cell mitosis inhibition,potential cancer treatment evaluation,biomedical optical imaging,pna,fluorescent confocal microscopy,automatic tip selection,pixel nucleus analysis,k-means clustering,drug effects,microtubule elongation modeling,fast fourier transforms,fluorescence spectroscopy,isolated microtubule tips,cancer treatment drug,cancer,optical microscopy,automatic initialization algorithm,microtubule tracking,gaussian match filter,microtubule rapid shortening modeling,temporal domain masked fft,active microtubule tips,microtubule pause modeling,medical image processing,automatic microtubule dynamics quantification,drugs,dynamic analysis,k means clustering,pixel,clustering algorithms,matched filter,algorithm design and analysis,confocal microscopy
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要