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Detecting cell division of Pseudomonas aeruginosa bacteria from bright-field microscopy images with hidden conditional random fields

机译:从具有隐藏条件随机场的明场显微镜图像中检测铜绿假单胞菌细菌的细胞分裂

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An approach to automatically detect bacteria division with temporal models is presented. To understand how bacteria migrate and proliferate to form complex multicellular behaviours such as biofilms, it is desirable to track individual bacteria and detect cell division events. Unlike eukaryotic cells, prokaryotic cells such as bacteria lack distinctive features, causing bacteria division difficult to detect in a single image frame. Furthermore, bacteria may detach, migrate close to other bacteria and may orientate themselves at an angle to the horizontal plane. Our system trains a hidden conditional random field (HCRF) model from tracked and aligned bacteria division sequences. The HCRF model classifies a set of image frames as division or otherwise. The performance of our HCRF model is compared with a Hidden Markov Model (HMM). The results show that a HCRF classifier outperforms a HMM classifier. From 2D bright field microscopy data, it is a challenge to separate individual bacteria and associate observations to tracks. Automatic detection of sequences with bacteria division will improve tracking accuracy.
机译:提出了一种利用时间模型自动检测细菌分裂的方法。为了了解细菌如何迁移和增殖以形成复杂的多细胞行为(例如生物膜),需要跟踪单个细菌并检测细胞分裂事件。与真核细胞不同,诸如细菌的原核细胞缺乏独特的特征,导致细菌分裂难以在单个图像帧中检测到。此外,细菌可能会分离,靠近其他细菌迁移,并使其自身与水平面成一定角度。我们的系统从跟踪和对齐的细菌分裂序列中训练隐藏的条件随机场(HCRF)模型。 HCRF模型将一组图像帧分类为分割或其他。我们将HCRF模型的性能与隐马尔可夫模型(HMM)进行了比较。结果表明,HCRF分类器优于HMM分类器。从2D明场显微镜数据来看,分离单个细菌并将观察结果与轨迹相关联是一个挑战。通过细菌分裂自动检测序列将提高跟踪准确性。

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