Razavi Amir R, Gill Hans, Ahlfeldt Hans, Shahsavar Nosrat
Department of Biomedical Engineering, Division of Medical Informatics, Linköping University, Sweden.
BMC Med Inform Decis Mak. 2008 Sep 21;8:41. doi: 10.1186/1472-6947-8-41.
The guideline for postmastectomy radiotherapy (PMRT), which is prescribed to reduce recurrence of breast cancer in the chest wall and improve overall survival, is not always followed. Identifying and extracting important patterns of non-compliance are crucial in maintaining the quality of care in Oncology.
Analysis of 759 patients with malignant breast cancer using decision tree induction (DTI) found patterns of non-compliance with the guideline. The PMRT guideline was used to separate cases according to the recommendation to receive or not receive PMRT. The two groups of patients were analyzed separately. Resulting patterns were transformed into rules that were then compared with the reasons that were extracted by manual inspection of records for the non-compliant cases.
Analyzing patients in the group who should receive PMRT according to the guideline did not result in a robust decision tree. However, classification of the other group, patients who should not receive PMRT treatment according to the guideline, resulted in a tree with nine leaves and three of them were representing non-compliance with the guideline. In a comparison between rules resulting from these three non-compliant patterns and manual inspection of patient records, the following was found: In the decision tree, presence of perigland growth is the most important variable followed by number of malignantly invaded lymph nodes and level of Progesterone receptor. DNA index, age, size of the tumor and level of Estrogen receptor are also involved but with less importance. From manual inspection of the cases, the most frequent pattern for non-compliance is age above the threshold followed by near cut-off values for risk factors and unknown reasons.
Comparison of patterns of non-compliance acquired from data mining and manual inspection of patient records demonstrates that not all of the non-compliances are repetitive or important. There are some overlaps between important variables acquired from manual inspection of patient records and data mining but they are not identical. Data mining can highlight non-compliance patterns valuable for guideline authors and for medical audit. Improving guidelines by using feedback from data mining can improve the quality of care in oncology.
为降低乳腺癌胸壁复发率并提高总生存率而开具的乳房切除术后放疗(PMRT)指南并非总能得到遵循。识别和提取不依从的重要模式对于维持肿瘤学护理质量至关重要。
使用决策树归纳法(DTI)对759例恶性乳腺癌患者进行分析,发现了不遵循指南的模式。根据是否接受PMRT的建议,使用PMRT指南对病例进行分类。对两组患者分别进行分析。将得出的模式转化为规则,然后与通过人工检查不依从病例记录提取的原因进行比较。
对根据指南应接受PMRT的组中的患者进行分析,未得出可靠的决策树。然而,对另一组根据指南不应接受PMRT治疗的患者进行分类,得出了一棵有九个叶节点的树,其中三个叶节点代表不遵循指南的情况。在对这三种不依从模式得出的规则与患者记录的人工检查结果进行比较时,发现了以下情况:在决策树中,腺体周围生长的存在是最重要的变量,其次是恶性侵犯淋巴结的数量和孕激素受体水平。DNA指数、年龄、肿瘤大小和雌激素受体水平也有涉及,但重要性较低。从病例的人工检查中可以看出,最常见的不依从模式是年龄高于阈值,其次是风险因素接近临界值和原因不明。
从数据挖掘和患者记录人工检查中获得的不依从模式的比较表明,并非所有不依从情况都是重复的或重要的。从患者记录人工检查和数据挖掘中获得的重要变量之间存在一些重叠,但并不完全相同。数据挖掘可以突出对指南制定者和医学审计有价值的不依从模式。利用数据挖掘的反馈改进指南可以提高肿瘤学护理质量。