PtbNet: Based on Local Few-Shot Classes and Small Objects to accurately detect PTB.

Wenhui Yang, Shuo Gao, Hao Zhang, Hong Yu, Menglei Xu, Puimun Chong, Weijie Zhang, Hong Wang, Wenjuan Zhang, Airong Qian
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Abstract

Pulmonary Tuberculosis (PTB) is one of the world's most infectious illnesses, and its early detection is critical for preventing PTB. Digital Radiography (DR) has been the most common and effective technique to examine PTB. However, due to the variety and weak specificity of phenotypes on DR chest X-ray (DCR), it is difficult to make reliable diagnoses for radiologists. Although artificial intelligence technology has made considerable gains in assisting the diagnosis of PTB, it lacks methods to identify the lesions of PTB with few-shot classes and small objects. To solve these problems, geometric data augmentation was used to increase the size of the DCRs. For this purpose, a diffusion probability model was implemented for six few-shot classes. Importantly, we propose a new multi-lesion detector PtbNet based on RetinaNet, which was constructed to detect small objects of PTB lesions. The results showed that by two data augmentations, the number of DCRs increased by 80% from 570 to 2,859. In the pre-evaluation experiments with the baseline, RetinaNet, the AP improved by 9.9 for six few-shot classes. Our extensive empirical evaluation showed that the AP of PtbNet achieved 28.2, outperforming the other 9 state-of-the-art methods. In the ablation study, combined with BiFPN+ and PSPD-Conv, the AP increased by 2.1, APs increased by 5.0, and grew by an average of 9.8 in APm and APl. In summary, PtbNet not only improves the detection of small-object lesions but also enhances the ability to detect different types of PTB uniformly, which helps physicians diagnose PTB lesions accurately. The code is available at https://github.com/Wenhui-person/PtbNet/tree/master.

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PtbNet:基于本地少拍类和小物体,准确检测 PTB。
肺结核(PTB)是世界上最具传染性的疾病之一,早期发现对于预防肺结核至关重要。数字射线摄影(DR)一直是检查肺结核最常用、最有效的技术。然而,由于 DR 胸部 X 光片(DCR)上的表型种类繁多且特异性较弱,放射科医生很难做出可靠的诊断。虽然人工智能技术在辅助诊断肺结核方面取得了相当大的进展,但它缺乏识别肺结核病变的方法,因为肺结核的病变类型较少,且病变物体较小。为了解决这些问题,我们采用了几何数据增强技术来增加 DCR 的大小。为此,我们采用了一个扩散概率模型,用于识别六种少镜头类别。重要的是,我们在 RetinaNet 的基础上提出了一种新的多病灶检测器 PtbNet,用于检测 PTB 病灶的小物体。结果显示,通过两次数据增强,DCR 的数量增加了 80%,从 570 个增加到 2859 个。在与基线 RetinaNet 进行的预评估实验中,6 个少镜头类别的 AP 提高了 9.9。我们广泛的经验评估表明,PtbNet 的 AP 达到了 28.2,超过了其他 9 种最先进的方法。在消融研究中,结合 BiFPN+ 和 PSPD-Conv,AP 增加了 2.1,APs 增加了 5.0,APm 和 APl 平均增加了 9.8。总之,PtbNet 不仅提高了小物体病变的检测能力,还增强了统一检测不同类型 PTB 的能力,有助于医生准确诊断 PTB 病变。代码见 https://github.com/Wenhui-person/PtbNet/tree/master。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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