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科研不端行为与维护科研诚信的方法。

Misconducts in research and methods to uphold research integrity.

机构信息

Department of Head and Neck Oncology, Sri Shankara Cancer Hospital, Bengaluru, Karnataka, India.

Deaprtment of Head and Neck Surgery, University Hospitals of Leicester, Leicester, UK.

出版信息

Indian J Cancer. 2024 Apr 1;61(2):354-359. doi: 10.4103/ijc.ijc_4_23. Epub 2024 Jul 16.

Abstract

Research misconduct refers to deliberate or accidental manipulation or misrepresentation of research data, findings, or processes. It can take many forms, such as fabricating data, plagiarism, or failing to disclose conflicts of interest. Data falsification is a serious problem in the field of medical research, as it can lead to the promotion of false or misleading information. Researchers might engage in p-hacking - the practice of using someone else's research results or ideas without giving them proper attribution. Conflict of interest (COI) occurs when an individual's personal, financial, or professional interests could potentially influence their judgment or actions in relation to their research. Nondisclosure of COI can be considered research misconduct and can damage the reputation of the authors and institutions. Hypothesis after results are known can lead to the promotion of false or misleading information. Cherry-picking data is the practice of focusing attention on certain data points or results that support a particular hypothesis, while ignoring or downplaying results that do not. Researchers should be transparent about their methods and report their findings honestly and accurately. Research institutions should have clear and stringent policies in place to address scientific misconduct. This knowledge must become widespread, so that researchers and readers understand what approaches to statistical analysis and reporting amount to scientific misconduct. It is imperative that readers and researchers alike are aware of the methods of statistical analysis and reporting that constitute scientific misconduct.

摘要

研究不端行为是指故意或无意地操纵或歪曲研究数据、发现或过程。它可以采取多种形式,例如伪造数据、剽窃或未能披露利益冲突。数据伪造是医学研究领域的一个严重问题,因为它可能导致虚假或误导性信息的传播。研究人员可能会进行 p 值操纵——即使用他人的研究结果或想法而不给予适当的归属。当个人的个人、财务或职业利益可能潜在地影响他们与研究相关的判断或行动时,就会出现利益冲突(COI)。不披露 COI 可被视为研究不端行为,并可能损害作者和机构的声誉。在已知结果后提出假设可能会导致虚假或误导性信息的传播。选择性数据采集是指关注某些数据点或结果的做法,这些数据点或结果支持特定的假设,而忽略或淡化不支持该假设的结果。研究人员应该对其方法透明,并诚实地报告其发现。研究机构应制定明确而严格的政策来解决科学不端行为。这些知识必须广泛传播,以便研究人员和读者了解哪些统计分析和报告方法构成了科学不端行为。读者和研究人员都必须意识到构成科学不端行为的统计分析和报告方法。

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