Department of Psychological and Brain Sciences, University of Iowa, Iowa City, Iowa, USA.
Holden Comprehensive Cancer Center, University of Iowa, Iowa City, Iowa, USA.
Cancer. 2022 Dec 1;128(23):4157-4165. doi: 10.1002/cncr.34496. Epub 2022 Oct 17.
Biobehavioral factors such as social isolation and depression have been associated with disease progression in ovarian and other cancers. Here, the authors developed a noninvasive, exosomal RNA profile for predicting ovarian cancer disease progression and subsequently tested whether it increased in association with biobehavioral risk factors.
Exosomes were isolated from plasma samples from 100 women taken before primary surgical resection or neoadjuvant (NACT) treatment of ovarian carcinoma and 6 and 12 months later. Biobehavioral measures were sampled at all time points. Plasma from 76 patients was allocated to discovery analyses in which morning presurgical/NACT exosomal RNA profiles were analyzed by elastic net machine learning to identify a biomarker predicting rapid (≤6 months) versus more extended disease-free intervals following initial treatment. Samples from a second subgroup of 24 patients were analyzed by mixed-effects linear models to determine whether the progression-predictive biomarker varied longitudinally as a function of biobehavioral risk factors (social isolation and depressive symptoms).
An RNA-based molecular signature was identified that discriminated between individuals who had disease progression in ≤6 months versus >6 months, independent of clinical variables (age, disease stage, and grade). In a second group of patients analyzed longitudinally, social isolation and depressive symptoms were associated with upregulated expression of the disease progression propensity biomarker, adjusting for covariates.
These data identified a novel exosome-derived biomarker indicating propensity of ovarian cancer progression that is sensitive to biobehavioral variables. This derived biomarker may be potentially useful for risk assessment, intervention targeting, and treatment monitoring.
社会隔离和抑郁等生物行为因素与卵巢癌和其他癌症的疾病进展有关。在这里,作者开发了一种非侵入性的外泌体 RNA 谱,用于预测卵巢癌疾病进展,并随后测试其是否与生物行为危险因素相关增加。
从 100 名女性的血浆样本中分离外泌体,这些女性在原发性手术切除或新辅助(NACT)治疗卵巢癌之前以及 6 个月和 12 个月后采集。在所有时间点采集生物行为措施。将 76 名患者的血浆分配到发现分析中,其中通过弹性网机器学习分析早晨术前/NACT 外泌体 RNA 谱,以确定预测初始治疗后快速(≤6 个月)与更广泛无疾病间隔的生物标志物。对来自第二个 24 名患者的亚组的样本进行混合效应线性模型分析,以确定进展预测生物标志物是否作为生物行为危险因素(社会隔离和抑郁症状)的函数进行纵向变化。
确定了一种基于 RNA 的分子特征,可以区分疾病在≤6 个月与>6 个月之间进展的个体,独立于临床变量(年龄、疾病阶段和分级)。在第二个进行纵向分析的患者组中,社会隔离和抑郁症状与疾病进展倾向生物标志物的上调表达相关,调整了协变量。
这些数据确定了一种新的外泌体衍生生物标志物,表明卵巢癌进展的倾向,对生物行为变量敏感。该衍生的生物标志物可能对风险评估、干预目标和治疗监测具有潜在的应用价值。