- Healthcare Analytics Made Simple
- Vikas (Vik) Kumar
- 198字
- 2021-07-23 17:18:35
Cancer
There are several reasons why predictive modeling for cancer has become an important use case. For one thing, cancer is the second leading cause of death among medical diseases, just behind heart attacks. It's insidious onset and course makes cancer diagnosis just that bit more surprising and devastating. No one can dispute the importance of fighting cancer with every tool in our arsenal, and that includes machine learning methods.
Second, within cancer machine learning, there are a variety of use cases that are well-suited to being solved by machine learning. For example, given a healthy patient, how likely is that patient to develop a particular type of cancer? Given a patient that has just been diagnosed with cancer, can we inexpensively predict whether the cancer is benign or malignant? How long can the patient be expected to survive? Will they likely be alive in 5 years? 10 years? To which, chemotherapy/radiotherapy regimen is the patient most likely to respond? What is the chance of cancer recurring once it is successfully treated? Questions like these benefit from mathematical answers that may be beyond the capabilities of a single doctor's reasoning or even that of a panel of doctors.
- Hands-On Intelligent Agents with OpenAI Gym
- 樂高機器人:WeDo編程與搭建指南
- ServiceNow Cookbook
- 分布式多媒體計算機系統
- Visual C++編程全能詞典
- CentOS 8 Essentials
- Enterprise PowerShell Scripting Bootcamp
- 工業機器人運動仿真編程實踐:基于Android和OpenGL
- Red Hat Linux 9實務自學手冊
- 網站入侵與腳本攻防修煉
- Linux Shell編程從初學到精通
- Linux系統管理員工具集
- 運動控制系統(第2版)
- Creating ELearning Games with Unity
- 網絡安全概論