<p><span lang="EN-US" style="font-family: 'Times New Roman',serif; mso-fareast-font-family: 'Times New Roman'; mso-font-kerning: 0pt; mso-ligatures: none; mso-ansi-language: EN-US; mso-fareast-language: EN-IN;">This book offers an alternative to faith-dependent analytical approaches, explaining how original data can be transformed into cogent and compelling interpretations with analytical techniques that are straightforward and accessible to biomedical scientists. Some data-related topics covered in the book are the aesthetics of data or how beauty in data inspires, erroneous data by fraud or honest mistake, the difference between experimental and observational data, reproducibility of data, and the implications of focusing on original data for peer review.&#xa0;</span></p><p class="MsoNormal" style="mso-margin-top-alt: auto; mso-margin-bottom-alt: auto;"><span lang="EN-US" style="font-family: 'Times New Roman',serif; mso-fareast-font-family: 'Times New Roman'; mso-font-kerning: 0pt; mso-ligatures: none; mso-ansi-language: EN-US; mso-fareast-language: EN-IN;">&#xa0;By considering these various subjects, the author has synthesized a philosophy to help students develop an effective and appropriate sensibility. The book can serve as a guide for biomedical research investigators in their studies, assist practitioners in making sense of complex mechanisms for patient benefit, and for business professionals who may learn from a thoughtful consideration of biomedical science. This book is intentionally accessible for those without an extensive biomedical science background, and hopes to motivate readers to expand their data literacy and comprehension, in the age of AI.</span></p>

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Biomedical Research Data in the Age of AI

  • David Kaplan

摘要

This book offers an alternative to faith-dependent analytical approaches, explaining how original data can be transformed into cogent and compelling interpretations with analytical techniques that are straightforward and accessible to biomedical scientists. Some data-related topics covered in the book are the aesthetics of data or how beauty in data inspires, erroneous data by fraud or honest mistake, the difference between experimental and observational data, reproducibility of data, and the implications of focusing on original data for peer review. 

 By considering these various subjects, the author has synthesized a philosophy to help students develop an effective and appropriate sensibility. The book can serve as a guide for biomedical research investigators in their studies, assist practitioners in making sense of complex mechanisms for patient benefit, and for business professionals who may learn from a thoughtful consideration of biomedical science. This book is intentionally accessible for those without an extensive biomedical science background, and hopes to motivate readers to expand their data literacy and comprehension, in the age of AI.