RK
2 de jul. de 2020
It was a nice course. Though it covers basics. A follow-up advanced specilization can be made. Overall, it's sufficient for beginner for an engineer trying to learn application of AI for medical field
KH
26 de may. de 2020
Throughout this course, I was able to understand the different medical and deep learning terminology used. Definitely a good course to understand the basic of image classification and segmentation!
por Deleted A
•21 de abr. de 2020
Great Course!
por Mustak A
•21 de mar. de 2021
great course
por Haiyun H
•1 de oct. de 2020
ありがとうございました。
por RICARDO A F S
•6 de ago. de 2020
Great course
por Anamitra M
•19 de jul. de 2020
Great course
por ahmed g m
•21 de may. de 2020
great course
por 鲁伟
•12 de may. de 2020
great course
por wonseok k
•24 de feb. de 2021
fantastic!!
por Keerthi G
•18 de jul. de 2020
Excellent
por YangBochen
•18 de abr. de 2021
Terrific
por Kamlesh C
•15 de jun. de 2020
Thankyou
por Santiago G
•24 de abr. de 2020
Thanks!
por salisu A
•20 de jun. de 2021
Thanks
por Bùi M N
•14 de may. de 2021
T
H
a
n
k
s
por Jeff D
•8 de nov. de 2020
Thanks
por Abraham G
•6 de dic. de 2021
great
por Ajay K
•25 de abr. de 2020
W
O
R
T
H
por ROBERT A R V T C
•28 de ago. de 2020
nice
por Bikash k K
•15 de jul. de 2020
good
por DR. M E
•20 de may. de 2020
Good
por Ana C S B
•6 de jun. de 2020
.
por Nirav S
•25 de may. de 2020
Overall it is still a good course and worth doing but I won't expect to be able to clear a job interview in medical machine learning based on this course. It touches many nice topics such as what to do if data is unbalanced, different metrics about evaluating the models. However the part about MRI segmentation seems very rushed. I would consider this as a very basic course and the student would have to spend significant personal time exploring on his/her own to really understand the concepts presented in the class. It wasn't easy for me to get help on some programming assignments when I got stuck a. Moreover, when I didn't get a perfect score on the programming assignments, I don't know where I made the mistakes, which makes it impossible to correct them.
por Sameer V
•31 de dic. de 2020
The course has been designed well, learnt new terminology which I was not aware of previously when working on 2D datasets. Good introduction to 3D images. The course could be a bit more detailed, for example, since data preprocessing is very crucial, it would have been great to have had an assignment on cleaning 3D data using image registration, alignment, etc. Additional references for reading mainly books would have been nice. Finally, brief details on the type of computing power and memory is required especially for 3D images would have been very helpful. If I run the code on my laptop, I am sure it will crash, would be nice to have an idea of the requirements. Anyways, thank you for the course, very nice introduction to AI in medical field.
por Erwin J T C
•8 de may. de 2020
As a Radiologist from the Philippines who has been desperately trying to find some kind of "grounded center" for all the AI/ML topics I've been studying online, this is a really great way to consolidate what I've learned so far especially for AI applied to Radiology. I've been training models for computer vision (based on free tutorials on-line) but this has definitely given me better insight as to how those models actually work and how they come together from simple numpy arrays, to tensors, layers, and finally into compiled models.... giving me a better appreciation for how activation functions and convolutions actually fit into the development of convolutional neural networks. More power to the team.
por Carlo F
•23 de nov. de 2020
The course was interesting but did not make me feel ready to apply a DL model on such data. It'a like being in a sandbox all the time: you play, you see things, then you are required to build your own, little, insignificant castle with your little basket, but no more than that. I think that real problems in AI application in this field are not about calculating sensitivity, specificicity or standardazing data, things for whom there are already functions built in libraries. I feel I know more this job, but i wouldn't be ready if i didn't know it yet before.