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DeepLearning.AI

AI For Medical Treatment

AI is transforming the practice of medicine. It’s helping doctors diagnose patients more accurately, make predictions about patients’ future health, and recommend better treatments. This Specialization will give you practical experience in applying machine learning to concrete problems in medicine. Medical treatment may impact patients differently based on their existing health conditions. In this third course, you’ll recommend treatments more suited to individual patients using data from randomized control trials. In the second week, you’ll apply machine learning interpretation methods to explain the decision-making of complex machine learning models. Finally, you’ll use natural language entity extraction and question-answering methods to automate the task of labeling medical datasets. These courses go beyond the foundations of deep learning to teach you the nuances in applying AI to medical use cases. If you are new to deep learning or want to get a deeper foundation of how neural networks work, we recommend that you take the Deep Learning Specialization.

Status: Patient Treatment
Status: Machine Learning Methods
IntermediateCourse22 hours

Featured reviews

AS

5.0Reviewed Jun 8, 2020

Fantastic coursework teaching fundamentals required for analysis of medical domain data. Quality content with great assignments. Level of difficulty is intermediate for the assignments.

AL

5.0Reviewed Jun 24, 2020

A bit tough, but well laid and well explained.Overall the entire specialization was very good. However it misses in depth theory . But overall a very good course with practical applications

AP

4.0Reviewed Jun 7, 2020

Weeks 2 and 3 were excellent! The week 1 programming assignment was tedious and even the quiz was a repeat from course 2.

RR

5.0Reviewed Sep 17, 2020

Wonderful course to learn the real application of AI in the medical field. Wonderfully explained every difficult concept with a simple explanation.

SR

5.0Reviewed Jun 7, 2020

Really great course and specialization as well. Learnt a lot of quality content specific to this field.

NK

4.0Reviewed Nov 13, 2020

The assignment was very heavy. It was better to have some practical case studies to understand the implementation steps.

NV

5.0Reviewed Jan 21, 2021

Programming assignments really contributed to the understanding of the material. Succinctly presented. Liked the course, thank you!

IG

5.0Reviewed Jun 27, 2020

Excellent course and the specialization. I feel like I participated in a research project. Learned much, and have cool notebooks to revisit at depth.

AS

5.0Reviewed Jun 1, 2020

The assignment of this course though had some typos/fixes, but was enthralling to solve those ourselves.

OV

5.0Reviewed Jun 6, 2020

Building a treatment model and evaluation, take this course to fully understand what to consider. A practical Model for Mediacl Treament

JD

5.0Reviewed Jun 17, 2020

I have no words to say!! I learned a lot! After deep learning specialization, this course gave me an insight into medical data analysis!!

SY

5.0Reviewed Jun 7, 2020

Great Course overall, I felt that week-1 is a bit theoretical rest is fine. Glad to learn about the interpretation of models.

All reviews

Showing: 20 of 111

Aleksander Turutin
4.0
Reviewed Jun 18, 2020
Vincenzo Maletta
1.0
Reviewed Aug 17, 2020
Andrei Roibu
1.0
Reviewed Nov 19, 2020
Karan Sindwani
1.0
Reviewed Jun 9, 2020
Adithya Prem Anand
5.0
Reviewed Jun 2, 2020
Irina Gruzinov
5.0
Reviewed Jun 27, 2020
Yashveer Singh
5.0
Reviewed Jun 23, 2020
Nehad Hirmiz
5.0
Reviewed Jun 17, 2020
Alex Chicano Corrales
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Reviewed Sep 29, 2023
Nikhil Agrawal
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Reviewed Jun 7, 2020
Teris Tam
4.0
Reviewed Jun 21, 2020
Boris Kabakov
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Vijay Alagappan
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Reviewed Jul 5, 2020
Ahmad Albarqawi
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Oussama BERGUIGA
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Reviewed Jun 22, 2020
Milos Mitic
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Reviewed Jun 23, 2020
Ali Erdengiz
3.0
Reviewed Jun 19, 2020
Louis Chirol
3.0
Reviewed Jan 29, 2022
Vivek Patel
3.0
Reviewed Apr 5, 2025
Adam Mehdi
3.0
Reviewed Jan 4, 2021