Machine Learning in Medicine - Cookbook Three (SpringerBriefs in Statistics)
Ton J. J. Cleophas
- 出版商: Springer
- 出版日期: 2014-11-10
- 售價: $2,370
- 貴賓價: 9.5 折 $2,252
- 語言: 英文
- 頁數: 148
- 裝訂: Paperback
- ISBN: 3319121626
- ISBN-13: 9783319121628
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相關分類:
Machine Learning、機率統計學 Probability-and-statistics
海外代購書籍(需單獨結帳)
相關主題
商品描述
Unique features of the book involve the following.
1.This book is the third volume of a three volume series of cookbooks entitled "Machine Learning in Medicine - Cookbooks One, Two, and Three". No other self-assessment works for the medical and health care community covering the field of machine learning have been published to date.
2. Each chapter of the book can be studied without the need to consult other chapters, and can, for the readership's convenience, be downloaded from the internet. Self-assessment examples are available at extras.springer.com.
3. An adequate command of machine learning methodologies is a requirement for physicians and other health workers, particularly now, because the amount of medical computer data files currently doubles every 20 months, and, because, soon, it will be impossible for them to take proper data-based health decisions without the help of machine learning.
4. Given the importance of knowledge of machine learning in the medical and health care community, and the current lack of knowledge of it, the readership will consist of any physician and health worker.
5. The book was written in a simple language in order to enhance readability not only for the advanced but also for the novices.
6. The book is multipurpose, it is an introduction for ignorant, a primer for the inexperienced, and a self-assessment handbook for the advanced.
7. The book, was, particularly, written for jaded physicians and any other health care professionals lacking time to read the entire series of three textbooks.
8. Like the other two cookbooks it contains technical descriptions and self-assessment examples of 20 important computer methodologies for medical data analysis, and it, largely, skips the theoretical and mathematical background.
9. Information of theoretical and mathematical background of the methods described are displayed in a "notes" section at the end of each chapter.
10.Unlike traditional statistical methods, the machine learning methodologies are able to analyze big data including thousands of cases and hundreds of variables.
11. The medical and health care community is little aware of the multidimensional nature of current medical data files, and experimental clinical studies are not helpful to that aim either, because these studies, usually, assume that subgroup characteristics are unimportant, as long as the study is randomized. This is, of course, untrue, because any subgroup characteristic may be vital to an individual at risk.
12. To date, except for a three volume introductary series on the subject entitled "Machine Learning in Medicine Part One, Two, and Thee, 2013, Springer Heidelberg Germany" from the same authors, and the current cookbook series, no books on machine learning in medicine have been published.
13. Another unique feature of the cookbooks is that it was jointly written by two authors from different disciplines, one being a clinician/clinical pharmacologist, one being a mathematician/biostatistician.
14. The authors have also jointly been teaching at universities and institutions throughout Europe and the USA for the past 20 years.
15. The authors have managed to cover the field of medical data analysis in a nonmathematical way for the benefit of medical and health workers.
16. The authors already successfully published many statistics textbooks and self-assessment books, e.g., the 67 chapter textbook entitled "Statistics Applied to Clinical Studies 5th Edition, 2012, Springer Heidelberg Germany" with downloads of 62,826 copies.
17. The current cookbook makes use, in addition to SPSS statistical software, of various free calculators from the internet, as well as the Konstanz Information Miner (Knime), a widely approved free machine learning package, and the free Weka Data Mining package from New Zealand.
18. The above software packages with hundreds of nodes, the basic processing units including virtually all of the statistical and data mining methods, can be used not only for data analyses, but also for appropriate data storage.
19. The current cookbook shows, particularly, for those with little affinity to value tables, that data mining in the form of a visualization process is very well feasible, and often more revealing than traditional statistics.
20.The Knime and Weka data miners uses widely available excel data files.
21. In current clinical research prospective cohort studies are increasingly replacing the costly controlled clinical trials, and modern machine learning methodologies like probit and tobit regressions as well as neural networks, Bayesian networks, and support vector machines prove to better fit their analysis than traditional statistical methods do.
22. The current cookbook not only includes concise descriptions of standard machine learning methods, but also of more recent methods like the linear machine learning models using ordinal and loglinear regression.
23. Machine learning tends to increasingly use evolutionary operation methodologies. Also this subject has been covered.
24. All of the methods described have been applied in the authors' own research prior to this publication.
商品描述(中文翻譯)
本書的獨特特點如下:
1. 本書是一系列三本烹飪書的第三卷,名為「醫學中的機器學習 - 烹飪書一、二和三」。迄今為止,尚未出版其他針對醫療和保健社區的機器學習領域的自我評估作品。
2. 本書的每一章都可以獨立學習,無需參考其他章節,並且為了讀者的方便,可以從互聯網上下載。自我評估示例可在extras.springer.com上找到。
3. 醫生和其他醫療工作者需要具備足夠的機器學習方法知識,尤其是現在,因為醫學電腦數據文件的數量目前每20個月翻倍一次,而且很快,如果沒有機器學習的幫助,他們將無法做出基於數據的健康決策。
4. 鑑於醫療和保健社區對機器學習知識的重要性以及目前對此知識的缺乏,本書的讀者將包括任何醫生和醫療工作者。
5. 本書使用簡單的語言撰寫,以提高高級讀者和新手的可讀性。
6. 本書具有多重用途,對於無知者來說是一本介紹書,對於沒有經驗者來說是一本入門書,對於高級讀者來說是一本自我評估手冊。
7. 本書特別為厭倦了的醫生和其他沒有時間閱讀整套三本教科書的醫療專業人員而寫。
8. 與其他兩本烹飪書一樣,本書包含了20種重要的醫學數據分析計算機方法的技術描述和自我評估示例,並且在很大程度上省略了理論和數學背景。
9. 每章結尾的“註釋”部分顯示了所描述方法的理論和數學背景的信息。
10. 與傳統統計方法不同,機器學習方法能夠分析包括數千個案例和數百個變量在內的大數據。
11. 醫療和保健社區對當前醫學數據文件的多維性性質知之甚少,而且實驗性臨床研究對此目的也沒有幫助,因為這些研究通常假設子組特徵不重要,只要研究是隨機的即可。當然,這是不正確的,因為任何子組特徵對於有風險的個體可能至關重要。
12. 迄今為止,除了同一作者的一系列三卷介紹性書籍,名為「醫學中的機器學習第一、二和三部分,2013年,Springer Heidelberg Germany」以及目前的烹飪書系列外,尚未出版其他關於醫學中的機器學習的書籍。
13. 這本烹飪書的另一個獨特特點是它由來自不同學科的兩位作者共同撰寫,一位是臨床醫生/臨床藥理學家,一位是數學家/生物統計學家。
14. 這兩位作者在歐洲和美國的大學和機構共同教學已有20年。
15. 作者們成功出版了許多統計學教科書和自我評估書籍,例如,2012年出版的67章教科書,名為「應用於臨床研究的統計學第五版,Springer Heidelberg Germany」,下載量達到62,826份。
16. 除了SPSS統計軟件,本書還使用了來自互聯網的各種免費計算器,以及廣泛認可的免費機器學習軟件Konstanz Information Miner (Knime)和來自新西蘭的免費Weka數據挖掘軟件。
17. 上述軟件包含數百個節點,基本上涵蓋了本書的內容。
請注意,本書的翻譯僅供參考,具體內容以原文為準。