miccai 2021: detecting when nnu-net models fail silently for covid-19 lung lesion segmentation
Published 3 years ago • 504 plays • Length 8:48Download video MP4
Download video MP3
Similar videos
-
12:59
sipaim 2021 presentation - multitasking segmentation of lung and covid-19 findings
-
21:19
challenges @ miccai 2021 | lena maier-hein & annika reinke
-
5:47
a standalone tool for automated covid 19 and lung segmentation
-
51:55
miccai industrial talk: data- and annotation-efficient deep learning for medical image analysis
-
51:30
miccai industrial talk: lessons on the path from code to clinic
-
34:33
ai seminar series: ai-derived annotations for lung cancer collections using nci imaging data commons
-
1:15
gracecastuc-054_lung_wakelee: my approach to repeat biopsies for adv. nsclc with insufficient tissue
-
3:19
id 65: debiasing deep chest x-ray classifiers using intra- and post-processing methods
-
4:08
5-micc: neural networks and cancer detection in tissue scans
-
2:40
covid-19 lung damage assessment by ai service
-
59:36
medical sieve grand challenge: a turing test for chest radiology ai
-
0:09
real-time ct lungs segmentation online with deep learning
-
7:49
ai based chest ct quanrification solution
-
17:17
covid lung ultrasound: understanding lung ultrasound and identifying covid-19 coronavirus.
-
2:34
ai-assisted lung ultrasound for covid-19 patients and point-of-care applications
-
28:21
deep learning based lung ultrasound video classification to predict covid
-
13:56
miua 2020: unlearning scanner bias for mri harmonisation in medical image segmentation
-
1:02:17
accuracy is everything: recent clinical evidence in navigation