2022
DOI: 10.1007/s11042-022-11954-9
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Detection of cervical cancer cells in complex situation based on improved YOLOv3 network

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Cited by 23 publications
(14 citation statements)
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“…Computer-assisted diagnosis is believed to ease this situation because it can potentially lower the misdiagnosis rate and also reduce the workload of cytologists [ 100 ]. Therefore, several studies have addressed the subject of automatic cervical cancer diagnosis [ 64 , 65 , 66 , 67 , 68 , 74 , 75 , 80 , 101 , 102 , 103 , 104 , 105 , 106 , 107 , 108 , 109 , 110 , 111 , 112 , 113 , 114 , 115 , 116 , 117 , 118 , 119 , 120 , 121 , 122 , 123 , 124 , 125 , 126 , 127 , 128 , 129 , 130 , 131 , 132 , 133 , 134 , 135 , 136 ]. The investigations showed that AI-assisted methods were promising, and achieved a high sensitivity and specificity in clinical cervical cytological screening [ 66 ,…”
Section: Resultsmentioning
confidence: 99%
“…Computer-assisted diagnosis is believed to ease this situation because it can potentially lower the misdiagnosis rate and also reduce the workload of cytologists [ 100 ]. Therefore, several studies have addressed the subject of automatic cervical cancer diagnosis [ 64 , 65 , 66 , 67 , 68 , 74 , 75 , 80 , 101 , 102 , 103 , 104 , 105 , 106 , 107 , 108 , 109 , 110 , 111 , 112 , 113 , 114 , 115 , 116 , 117 , 118 , 119 , 120 , 121 , 122 , 123 , 124 , 125 , 126 , 127 , 128 , 129 , 130 , 131 , 132 , 133 , 134 , 135 , 136 ]. The investigations showed that AI-assisted methods were promising, and achieved a high sensitivity and specificity in clinical cervical cytological screening [ 66 ,…”
Section: Resultsmentioning
confidence: 99%
“… Name Dataset Algorithm Detection/Classification/Segmentation Results Tool Cell location [37] Herlev and Private Improved YOLOv3 Detection and Classification mAP of 78.87% No [36] Harlev and Private Trainable Weka Segmentation Detection Acc of 98.88% Yes [23] SIPaKMeD Faster R-CNN All mAP of 0.37798, and AR of 0.64 (5-class) No [24] Herlve and private YOLOv3 All mAP of 0.6 (10-class) No Our model SIPaKMeD and private Modified Mask-RCNN All mAP 0f 0.6 and mAR of 0.86 (5-class) Yes …”
Section: Resultsmentioning
confidence: 99%
“…This paper carried out substantial experiments to evaluate the proposed method and the experimental results validated the effectiveness of the proposed method, which achieved an mAP of 65.44% and gained a 5.7% increase in mAP together with an 18.5% increase in specificity. Jia et al studied one-stage detection method for cervical cancer cells carefully [95,96]. They improved SSD model by fusing feature maps between different layers in the first work.…”
Section: One-stage Supervised Learning Based Detectionmentioning
confidence: 99%