{"title":"通道化霍特林模型观测器的统计偏差校正。","authors":"Lionel Desponds","doi":"10.1088/1361-6560/ad9541","DOIUrl":null,"url":null,"abstract":"<p><strong>Objective: </strong>Channelized Hotelling model observers are efficient at simulating the human observer visual performance in medical imaging detection tasks. However, channelized Hotelling observers (CHO) are subject to statistical biases from zero-signal and finite-sample effects. The point estimate of the d' value is also not always symmetric with exact confidence interval (CI) bounds determined for the infinitely trained CHO. A method for correcting these statistical biases and CI asymmetry is studied.</p><p><strong>Approach: </strong>CHO d' values and CI bounds with hold-out and resubstitution methods were computed for a range of 200x200 pixels images from 20 to 10 000 images for 10, 40 and 96 channels from a set of 20 000 images with gaussian coloured simulated noise and simulated signal. The median of the non-central F cumulative distribution (F'), which is the CHO underlying statistical behaviour for the resubstitution method, was computed, and compared to d' values and CI bounds. A set of experimental data was used to evaluate F' median values.</p><p><strong>Main results: </strong>The F' median allows to get accurate corrected simulated d' values down to zero-signals. For small d' values, the variation of d' values with the inverse of number of images is not linear while the F' median allows a good correction in such conditions. The F' median is also inherently symmetric with regards to the confidence interval. With experimental data, F' median values in a range of about 1 to 10 d' values were within -0.8% to 4.7% of linearly extrapolated values at an infinite number of images.</p><p><strong>Significance: </strong>The F' median correction is an effective simultaneous correction of the zero-signal statistical bias and finite-sample statistical bias, and of confidence interval asymmetry of channelized Hotelling observers.
.</p>","PeriodicalId":20185,"journal":{"name":"Physics in medicine and biology","volume":" ","pages":""},"PeriodicalIF":3.3000,"publicationDate":"2024-11-20","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Statistical biases correction in channelized Hotelling model observers.\",\"authors\":\"Lionel Desponds\",\"doi\":\"10.1088/1361-6560/ad9541\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Objective: </strong>Channelized Hotelling model observers are efficient at simulating the human observer visual performance in medical imaging detection tasks. However, channelized Hotelling observers (CHO) are subject to statistical biases from zero-signal and finite-sample effects. The point estimate of the d' value is also not always symmetric with exact confidence interval (CI) bounds determined for the infinitely trained CHO. A method for correcting these statistical biases and CI asymmetry is studied.</p><p><strong>Approach: </strong>CHO d' values and CI bounds with hold-out and resubstitution methods were computed for a range of 200x200 pixels images from 20 to 10 000 images for 10, 40 and 96 channels from a set of 20 000 images with gaussian coloured simulated noise and simulated signal. The median of the non-central F cumulative distribution (F'), which is the CHO underlying statistical behaviour for the resubstitution method, was computed, and compared to d' values and CI bounds. A set of experimental data was used to evaluate F' median values.</p><p><strong>Main results: </strong>The F' median allows to get accurate corrected simulated d' values down to zero-signals. For small d' values, the variation of d' values with the inverse of number of images is not linear while the F' median allows a good correction in such conditions. The F' median is also inherently symmetric with regards to the confidence interval. With experimental data, F' median values in a range of about 1 to 10 d' values were within -0.8% to 4.7% of linearly extrapolated values at an infinite number of images.</p><p><strong>Significance: </strong>The F' median correction is an effective simultaneous correction of the zero-signal statistical bias and finite-sample statistical bias, and of confidence interval asymmetry of channelized Hotelling observers.
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引用次数: 0
摘要
目的:在医学成像检测任务中,通道化霍特林模型观测器能有效模拟人类观测者的视觉表现。然而,通道化霍特林观测器(CHO)会受到零信号和有限样本效应造成的统计偏差的影响。d' 值的点估计值也不总是与为无限训练的 CHO 确定的精确置信区间 (CI) 边界对称。本文研究了纠正这些统计偏差和置信区间不对称的方法:方法:对 200x200 像素的图像计算 CHO d'值和 CI 边界,采用保持和重新置换方法,从 20 到 10 000 幅图像中计算 10、40 和 96 个通道的 CHO d'值和 CI 边界,这些图像来自 20 000 幅带有高斯彩色模拟噪声和模拟信号的图像。计算了非中心 F 累积分布(F')的中位数,并与 d' 值和 CI 边界进行了比较。一组实验数据用于评估 F' 中值:主要结果:F'中值可以获得精确的校正模拟 d'值,直至零信号。对于较小的 d'值,d'值与图像数量的倒数之间的变化不是线性的,而 F'中值可以在这种情况下进行很好的校正。F' 中值本身在置信区间方面也是对称的。在实验数据中,F'中值在大约 1 到 10 d'值范围内,与无限多图像时的线性推断值相比,误差在-0.8% 到 4.7% 之间:F'中值校正同时有效地校正了零信号统计偏差和有限样本统计偏差,以及通道化霍特林观测器的置信区间不对称性。
Statistical biases correction in channelized Hotelling model observers.
Objective: Channelized Hotelling model observers are efficient at simulating the human observer visual performance in medical imaging detection tasks. However, channelized Hotelling observers (CHO) are subject to statistical biases from zero-signal and finite-sample effects. The point estimate of the d' value is also not always symmetric with exact confidence interval (CI) bounds determined for the infinitely trained CHO. A method for correcting these statistical biases and CI asymmetry is studied.
Approach: CHO d' values and CI bounds with hold-out and resubstitution methods were computed for a range of 200x200 pixels images from 20 to 10 000 images for 10, 40 and 96 channels from a set of 20 000 images with gaussian coloured simulated noise and simulated signal. The median of the non-central F cumulative distribution (F'), which is the CHO underlying statistical behaviour for the resubstitution method, was computed, and compared to d' values and CI bounds. A set of experimental data was used to evaluate F' median values.
Main results: The F' median allows to get accurate corrected simulated d' values down to zero-signals. For small d' values, the variation of d' values with the inverse of number of images is not linear while the F' median allows a good correction in such conditions. The F' median is also inherently symmetric with regards to the confidence interval. With experimental data, F' median values in a range of about 1 to 10 d' values were within -0.8% to 4.7% of linearly extrapolated values at an infinite number of images.
Significance: The F' median correction is an effective simultaneous correction of the zero-signal statistical bias and finite-sample statistical bias, and of confidence interval asymmetry of channelized Hotelling observers.
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期刊介绍:
The development and application of theoretical, computational and experimental physics to medicine, physiology and biology. Topics covered are: therapy physics (including ionizing and non-ionizing radiation); biomedical imaging (e.g. x-ray, magnetic resonance, ultrasound, optical and nuclear imaging); image-guided interventions; image reconstruction and analysis (including kinetic modelling); artificial intelligence in biomedical physics and analysis; nanoparticles in imaging and therapy; radiobiology; radiation protection and patient dose monitoring; radiation dosimetry