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完整後設資料紀錄
DC 欄位 | 值 | 語言 |
---|---|---|
dc.contributor.advisor | 謝清麟(Ching-Lin Hsieh) | |
dc.contributor.author | Shih-Chieh Lee | en |
dc.contributor.author | 李士捷 | zh_TW |
dc.date.accessioned | 2021-06-17T07:29:31Z | - |
dc.date.available | 2019-08-26 | |
dc.date.copyright | 2019-08-26 | |
dc.date.issued | 2019 | |
dc.date.submitted | 2019-06-13 | |
dc.identifier.citation | Addington, J., Saeedi, H., & Addington, D. (2006). Facial affect recognition: a mediator between cognitive and social functioning in psychosis? Schizophrenia Research, 85, 142-150.
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dc.identifier.uri | http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/73343 | - |
dc.description.abstract | 背景:臉部情緒辨識 (facial emotion recognition, FER) 是人們藉由觀察他人臉部表情以推論其情緒狀態之能力,通常包含7種情緒(快樂、悲傷、生氣、厭惡、害怕、驚訝及平靜)。思覺失調症患者常有中至重度之FER缺損,影響其精神症狀、社會功能及生活品質。然而,常用FER評估工具有4大缺失(內容向度不完整、計分指標不詳盡、未校正受試者性別之影響及心理計量特性大多未知),嚴重限制結果之解讀。此外,FER向度繁多,且信度及效率不易兼顧,故內容完整且精準之FER測驗,很可能題數過多,影響可行性。結合篩檢與詳細評估之測驗方式,可先快速辨識功能缺損之向度,再準確估計缺損嚴重度,或可改善前述信度與效率難以兼具之瓶頸。
目的:發展適用於思覺失調症患者篩檢暨評估之多向度臉部情緒辨識測驗 (Screening and Measuring Test of Multidimensional FER, SMART-FER),並驗證其再測信度、練習效應、建構效度及已知族群效度。 方法:分為二個階段:(一)以3步驟發展SMART-FER:(1) 發展題庫:先自「專業表演者臉部表情常模資料」挑選7種情緒之照片做為候選題,再施測於患者及健康成人。研究者於剔除multidimensional Rasch model適配度不佳之題目,並考量性別differential item functioning (DIF) 後,剩餘題目組成最終版題庫。(2) 結合篩檢與詳細評估:藉由結合效能較佳之篩檢 (computerized classification testing, CCT) 及詳細評估測驗方法 (computerized adaptive testing, CAT),並比較不同終止條件下之篩檢效能(如正確率)、信度及施測效率,以挑選兼具高篩檢效能、高信度及高效率之組合,做為最終版SMART-FER;(3) 建構SMART-FER之施測介面。(二)驗證SMART-FER之心理計量特性:使用參與前一階段,以及願意接受再測(間隔4週後)且症狀穩定之患者資料,模擬分析SMART-FER之再測信度、練習效應及已知族群效度。 研究結果:第一階段共選168題候選題(7種情緒,各24題),並施測於351位患者及101位健康成人。於刪除3題適配度不佳之題目後,剩餘165題適配度良好 (infit and outfit mean square = 0.13–1.36),支持其個別單向度,故納入最終版題庫。其中39題具嚴重性別DIF,故藉由因應受試者性別採用不同題目難度之方式,以校正其影響。由於高篩檢效能、高信度及高施測效率難以兼具,研究者改在特定篩檢效能下,挑選二種次佳之終止條件(快速模式及精準模式),以滿足使用者之需求。快速模式(「各向度篩檢7題」,搭配「信度 ≥ 0.70」或「多施測一題之信度增加量 < 0.001」之終止條件)之SMART-FER僅需68題(預計10分鐘),即具備可接受之篩檢效能(正確率 = 85.5%)及信度 (0.68–0.74)。精準模式(「各向度篩檢13題」,搭配「信度 ≥ 0.90」或「多施測一題之信度增加量 < 0.005」之終止條件),平均施測110題(約17分鐘),可達成良好之篩檢效能(正確率 = 91.8%)以及與完整題庫相似之信度(0.70–0.84 vs. 0.72–0.88)。共82位症狀穩定之患者參與再測評估。二種施測模式之SMART-FER皆具可接受至良好之再測信度 (intraclass correlation coefficient = 0.63–0.75 and 0.66–0.81)、已知族群效度(Cohen’s d = -0.48至-1.51及-0.49至-1.59)、建構效度(測驗結果與完整題庫高度相關,Pearson's r = 0.91至0.97),與微小至可忽略之練習效應(Cohen’s d = -0.15至0.23及-0.20至0.21)。 結論:初步結果顯示SMART-FER可提供完整(7種情緒且有個別向度分數)、有效(符合多向度模型,並能區分患者與健康人FER差異)且不受性別DIF影響之評估。此外,SMART-FER可彈性調整施測模式,分別強化測驗信度(精準模式)或效率(快速模式),以滿足不同使用者之需求。因此,SMART-FER具潛力廣泛應用於臨床及研究場域,以提升評估效能。 | zh_TW |
dc.description.abstract | Background: Facial emotion recognition (FER) is the ability to identify others’ emotion status through their facial expressions, which contain identification of the 7 emotions (happiness, sadness, anger, disgust, fear, surprise, and calm). Patients with schizophrenia tend to have moderate to severe deficits of FER that affect their psychotic symptoms, social function, and quality of life. However, the commonly used FER measures have 4 flaws (i.e., incomprehensiveness, lack of score for each domain, possible biases due to examinees’ sex, and unknown psychometric properties), which severely limits their utility. Given the numerous domains of FER and the challenge of achieving high reliability and efficiency simultaneously, combining screening and measuring tests appears a promising solution.
Purposes: The purpose of this study was to develop a screening and measuring test of multidimensional FER (SMART-FER). We examined its test-retest reliability, practice effect, ceiling and floor effects, construct validity, and known-groups validity. Methods: This study contained two phases. First, the SMART-FER was developed through 3 steps. (1) Forming the FER item bank. We first selected the candidate items (i.e., pictures of professional performers’ facial expressions across 7 emotions) from a database and validated them on patients with schizophrenia and healthy adults. The misfit items to the multidimensional Rasch model were removed. The items with differential item functioning (DIF) of sex were examined and considered. After that, the remaining items were used to form the item bank. (2) Combining screening and measuring tests: We first incorporated the two advanced testings: the computerized classification testing (CCT) and computerized adaptive testing (CAT). Then, simulations were performed to compare the accuracy, reliability, and efficiency of both tests with different combinations of stopping rules. We deemed the SMART-FER to be the test that achieved high accuracy, reliability, and efficiency simultaneously. (3) Constructing the administration system of the SMART-FER. Second, we examined the test-retest reliability and known-groups validity of the SMART-FER in patients with schizophrenia who had stable clinical severities and completed the FER item bank twice with a 4-week interval. Results: In phase 1, we selected 168 items (24 for each domain) as candidate items and tested these items on 351 patients with schizophrenia and 101 healthy adults. After removing 3 misfit items and adjusting item difficulties for the 39 DIF items, a total of 165 items were included in the FER item bank. All items showed good model fits (infit and outfit mean square = 0.13 to 1.36), supporting the unidimensionality of each domain. Given that high accuracy, reliability and efficient could not be achieved simultaneously, two alternative sets of rules (the “most reliable set” and the “most efficient set”) with acceptable accuracy were determined for prospective users. With the most efficient set (screening 7 items for each domain plus CAT with “reliability ≥ 0.70” or “limited reliability increase [LRI] < 0.001”), the SMART-FER needed 65 items (taking about 10 minutes) to achieve acceptable reliability (0.68–0.74) and accuracy (85.5%). Using the most reliable set (screening 17 items for each domain plus CAT with “reliability ≥ 0.90” or “LRI < 0.005”, the SMART-FER adopted about 110 items (17 minutes) to provide high accuracy (92.8%) and similar reliabilities to the FER item bank (0.70–0.84 vs. 0.72–0.88). In phase 2, 82 patients with stable symptom severities who completed the FER item bank twice. In general, with both assessment modes, the SMART-FER showed acceptable to good test-retest reliability (intraclass correlation coefficient = 0.63–0.75 and 0.66–0.81), trivial practice effect (Cohen’s d = -0.15 to 0.23 and -0.20 to 0.21), good construct validity (Pearson’s r with the FER item bank = 0.91 to 0.99), and satisfactory known-groups validity (Cohen’s d = -0.48 to -1.51 and -0.49 to -1.59). Conclusions: Our findings suggest that the SMART-FER provides comprehensive, valid, and unbiased assessments of patients’ FER levels. In addition, the stopping rules of the SMART-FER can be flexibly adapted to optimize the reliability or efficiency of assessments depending on users’ needs. Thus, it shows great potential to be applied in both clinical and research settings to improve the efficacy of assessments. | en |
dc.description.provenance | Made available in DSpace on 2021-06-17T07:29:31Z (GMT). No. of bitstreams: 1 ntu-108-F02429009-1.pdf: 4454118 bytes, checksum: 72a9c65f994415120bf462dbcb8a8942 (MD5) Previous issue date: 2019 | en |
dc.description.tableofcontents | 口試委員會審定書 i
中文摘要 ii 英文摘要 iv 圖目錄 ix 表目錄 x 第一章 臉部情緒辨識 (facial emotion recognition, FER) 簡介 1 第一節 FER之定義 1 第二節 FER之相關理論 2 第三節 FER之影響因子 5 第二章 思覺失調症之FER缺損 7 第一節 思覺失調症簡介 7 第二節 思覺失調症患者之FER缺損 8 第三章 FER測驗之介紹與評析 11 第一節 良好FER測驗之主要特性 11 第二節 常用於思覺失調症患者之FER測驗 15 第三節 常用FER測驗之缺點及影響 18 第四章 發展「結合篩檢測驗與詳細評估」及「多向度羅序模型」之組合式FER測驗 20 第一節 篩檢測驗 (screening test) 20 第二節 詳細評估 (in-depth assessment) 20 第三節 結合篩檢測驗與詳細評估之組合式測驗 21 第四節 多向度羅序模型 (multidimensional Rasch model) 21 第五節 電腦化分類測驗 (computerized classification testing, CCT) 24 第六節 電腦適性測驗 (computerized adaptive testing, CAT) 25 第七節 結合CCT及CAT之組合式測驗 26 第五章 研究目的 28 第六章 研究方法 29 第一節 階段一:發展SMART-FER 29 第二節 階段二:驗證SMART-FER之心理計量特性 42 第七章 研究結果 44 第一節 階段一:發展SMART-FER 44 第二節 階段二:驗證SMART-FER之心理計量特性 48 第八章 討論 50 第九章 結論 60 參考文獻 62 圖一、結合篩檢與詳細評估之組合式測驗示意圖 75 圖二、CCT施測流程示意圖 76 圖三、CAT施測流程示意圖 77 圖四、階段式及平行式組合測驗之概念圖 78 圖五、SMART-FER之發展及驗證流程 79 圖六、SMART-FER之施測介面與流程 80 圖七、平靜向度之題目難度與受試者能力之相對關係 81 圖八、快樂向度之題目難度與受試者能力之相對關係 82 圖九、悲傷向度之題目難度與受試者能力之相對關係 83 圖十、生氣向度之題目難度與受試者能力之相對關係 84 圖十一、厭惡向度之題目難度與受試者能力之相對關係 85 圖十二、害怕向度之題目難度與受試者能力之相對關係 86 圖十三、驚訝向度之題目難度與受試者能力之相對關係 87 表一、二種常用FER模型之重點整理 88 表二、常用之FER評估工具與缺點 90 表三、檢驗篩檢效能之指標與其標準 91 表四、受試者之人口學及臨床資料 92 表五、SMART-FER題庫之難度及模型適配度 93 表六、思覺失調症患者於各向度能力狀態之人數比率 100 表七、FER向度間之相關性 (Pearson's r) 101 表八、階段式組合測驗之篩檢效能 102 表九、平行式組合測驗之篩檢效能 104 表十、SMART-FER之羅序信度及施測效率 105 表十一、SMART-FER之再測信度及練習效應 106 表十二、SMART-FER之已知族群效度 107 | |
dc.language.iso | zh-TW | |
dc.title | 發展思覺失調症患者篩檢暨評估之多向度臉部情緒辨識測驗 | zh_TW |
dc.title | Development of a screening and measuring test of multidimensional facial emotion recognition in
patients with schizophrenia | en |
dc.type | Thesis | |
dc.date.schoolyear | 107-2 | |
dc.description.degree | 博士 | |
dc.contributor.oralexamcommittee | 陳建中(Chien-Chung Chen),劉震鐘(Chen-Chung Liu),施慶麟(Ching-Lin Shih),黃小玲(Sheau-Ling Huang),吳建德(Chien-Te Wu) | |
dc.subject.keyword | 思覺失調症,臉部情緒辨識,電腦化分類測驗,電腦適性測驗,心理計量特性, | zh_TW |
dc.subject.keyword | schizophrenia,facial emotion recognition,computerized classification testing,computerized adaptive testing,psychometric property, | en |
dc.relation.page | 107 | |
dc.identifier.doi | 10.6342/NTU201900900 | |
dc.rights.note | 有償授權 | |
dc.date.accepted | 2019-06-17 | |
dc.contributor.author-college | 醫學院 | zh_TW |
dc.contributor.author-dept | 職能治療研究所 | zh_TW |
顯示於系所單位: | 職能治療學系 |
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